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Reporting a Multiple Linear 
Regression in APA Format
Note – the examples in this presentation come from, 
Cronk, B. C. (2012). How to Use SPSS Statistics: A 
Step-by-step Guide to Analysis and Interpretation. 
Pyrczak Pub.
Here’s the template:
DV = Dependent Variable 
IV = Independent Variable
DV = Dependent Variable 
IV = Independent Variable 
A multiple linear regression was calculated to predict 
[DV] based on [IV1] and [IV2]. A significant regression 
equation was found (F(_,__) = ___.___, p < .___), with 
an R2 of .___. Participants’ predicted [DV] is equal to 
__.___ – __.___ (IV1) + _.___ (IV2), where [IV1] is coded 
or measured as _____________, and [IV2] is coded or 
measured as __________. Object of measurement 
increased _.__ [DV unit of measure] for each [IV1 unit 
of measure] and _.__ for each [IV2 unit of measure]. 
Both [IV1] and [IV2] were significant predictors of [DV].
Wow, that’s a lot. Let’s break it down using the 
following example:
Wow, that’s a lot. Let’s break it down using the 
following example: 
You have been asked to investigate the degree to which 
height and sex predicts weight.
Wow, that’s a lot. Let’s break it down using the 
following example: 
You have been asked to investigate the degree to which 
height and sex predicts weight.
Wow, that’s a lot. Let’s break it down using the 
following example: 
You have been asked to investigate the degree to which 
height and sex predicts weight. 
&
Wow, that’s a lot. Let’s break it down using the 
following example: 
You have been asked to investigate the degree to which 
height and sex predicts weight. 
&
Let’s begin with the first part of the template:
A multiple linear regression was calculated to predict 
[DV] based on their [IV1] and [IV2].
A multiple linear regression was calculated to predict 
[DV] based on their [IV1] and [IV2]. 
You have been asked to investigate the degree to which 
height and sex predicts weight.
A multiple linear regression was calculated to predict 
weight based on their [IV1] and [IV2]. 
You have been asked to investigate the degree to which 
height and sex predicts weight.
A multiple linear regression was calculated to predict 
weight based on their height and [IV2]. 
You have been asked to investigate the degree to which 
height and sex predicts weight.
A multiple linear regression was calculated to predict 
weight based on their height and sex. 
You have been asked to investigate the degree to which 
height and sex predicts weight.
Now onto the second part of the template:
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(_,__) = __.___, p < .___), with an R2 of .____.
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(_,__) = ___.___, p < .___), with an R2 of .___.
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(_,__) = ___.___, p < .___), with an R2 of .___. 
Here’s the output:
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(_,__) = ___.___, p < .___), with an R2 of .___. 
Model Summary 
Model R R Square 
Adjusted 
R Square 
Std. Error of 
the Estimate 
1 .997a .993 .992 2.29571 
ANOVAa 
Model Sum of Squares df Mean Squares F Sig. 
1. Regression 
Residual 
Total 
10342.424 
68.514 
10410.938 
2 
13 
15 
5171.212 
5.270 
981.202 .000a 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2,__) = ___.___, p < .___), with an R2 of .___. 
Model Summary 
Model R R Square 
Adjusted 
R Square 
Std. Error of 
the Estimate 
1 .997a .993 .992 2.29571 
ANOVAa 
Model Sum of Squares df Mean Squares F Sig. 
1. Regression 
Residual 
Total 
10342.424 
68.514 
10410.938 
2 
13 
15 
5171.212 
5.270 
981.202 .000a 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = ___.___, p < .___), with an R2 of .___. 
Model Summary 
Model R R Square 
Adjusted 
R Square 
Std. Error of 
the Estimate 
1 .997a .993 .992 2.29571 
ANOVAa 
Model Sum of Squares df Mean Squares F Sig. 
1. Regression 
Residual 
Total 
10342.424 
68.514 
10410.938 
2 
13 
15 
5171.212 
5.270 
981.202 .000a 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .___), with an R2 of .___. 
Model Summary 
Model R R Square 
Adjusted 
R Square 
Std. Error of 
the Estimate 
1 .997a .993 .992 2.29571 
ANOVAa 
Model Sum of Squares df Mean Squares F Sig. 
1. Regression 
Residual 
Total 
10342.424 
68.514 
10410.938 
2 
13 
15 
5171.212 
5.270 
981.202 .000a 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .___. 
Model Summary 
Model R R Square 
Adjusted 
R Square 
Std. Error of 
the Estimate 
1 .997a .993 .992 2.29571 
ANOVAa 
Model Sum of Squares df Mean Squares F Sig. 
1. Regression 
Residual 
Total 
10342.424 
68.514 
10410.938 
2 
13 
15 
5171.212 
5.270 
981.202 .000a 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Model Summary 
Model R R Square 
Adjusted 
R Square 
Std. Error of 
the Estimate 
1 .997a .993 .992 2.29571 
ANOVAa 
Model Sum of Squares df Mean Squares F Sig. 
1. Regression 
Residual 
Total 
10342.424 
68.514 
10410.938 
2 
13 
15 
5171.212 
5.270 
981.202 .000a 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Now for the next part of the template:
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted [DV] is equal to __.___ + __.___ (IV2) + 
_.___ (IV1), where [IV2] is coded or measured as _____________, 
and [IV1] is coded or measured __________.
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted [DV] is equal to __.___ + __.___ (IV1) + 
_.___ (IV2), where [IV1] is coded or measured as _____________, 
and [IV2] is coded or measured __________. 
ANOVAa 
Model Sum of Squares df Mean Squares F Sig. 
1. Regression 
Residual 
Total 
10342.424 
68.514 
10410.938 
2 
13 
15 
5171.212 
5.270 
981.202 .000a 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted [DV] is equal to __.___ + __.___ (IV1) + 
_.___ (IV2), where [IV1] is coded or measured as _____________, 
and [IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to __.___ + __.___ (IV1) + 
_.___ (IV2), where [IV1] is coded or measured as _____________, 
and [IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 + __.___ (IV1) + 
_.___ (IV2), where [IV1] is coded or measured as _____________, 
and [IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (IV1) + 
_.___ (IV1), where [IV1] is coded or measured as _____________, 
and [IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 
_.___ (IV1), where [IV1] is coded or measured as _____________, 
and [IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 
2.101 (IV1), where [IV1] is coded or measured as _____________, 
and [IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 
2.101 (HEIGHT), where [IV1] is coded or measured as 
_____________, and [IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 
2.101 (HEIGHT), where sex is coded or measured as 
_____________, and [IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 
2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and 
[IV2] is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 
2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and 
height is coded or measured __________. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 
2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and 
height is measured in inches. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict weight 
based on their height and sex. A significant regression equation 
was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. 
Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 
2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and 
height is measured in inches. 
Independent Variable1: Height 
Independent Variable2: Sex 
Dependent Variable: Weight 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
Now for the second to last portion of the template:
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches.
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Object of measurement increased _.__ [DV unit of 
measure] for each [IV1 unit of measure] and _.__ for each 
[IV2 unit of measure].
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Object of measurement increased _.__ [DV unit of 
measure] for each [IV1 unit of measure] and _.__ for each 
[IV2 unit of measure]. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased _.__ [DV unit of 
measure] for each [IV1 unit of measure] and _.__ for each 
[IV2 unit of measure]. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 [DV unit of 
measure] for each [IV1 unit of measure] and _.__ for each 
[IV2 unit of measure]. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each [IV1 unit of measure] and _.__ for each [IV2 unit of 
measure]. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and _.__ for each [IV2 unit of measure]. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and males weighed 39.133 pounds 
more than females. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
Finally, the last part of the template:
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and males weighed 39.133 pounds 
more than females.
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and males weighed 39.133 pounds 
more than females. Both [IV1] and [IV2] were significant 
predictors of [DV].
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and males weighed 39.133 pounds 
more than females. Both [IV1] and [IV2] were significant 
predictors of [DV]. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and males weighed 39.133 pounds 
more than females. Both height and [IV2] were significant 
predictors of [DV]. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and males weighed 39.133 pounds 
more than females. Both height and sex were significant 
predictors of [DV]. 
Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and males weighed 39.133 pounds 
more than females. Both height and sex were significant 
predictors of [DV]. 
. Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight is 
equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex 
is coded as 1 = Male, 2 = Female, and height is measured in 
inches. Participant’s weight increased 2.101 pounds for 
each inch of height and males weighed 39.133 pounds 
more than females. Both height and sex were significant 
predictors of weight. 
. Coefficientsa 
Model 
Unstandardized 
Coefficients 
Standardized 
Coefficients 
B St. Error Beta t Sig. 
1. (Constant) 
Height 
Sex 
47.138 
2.101 
-39.133 
14.843 
.198 
1.501 
.312 
-7.67 
-3.176 
10.588 
-25.071 
.007 
.000 
.000
And there you are:
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight 
is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), 
where sex is coded as 1 = Male, 2 = Female, and height 
is measured in inches. Object of measurement 
increased 2.101 pounds for each inch of height and 
males weighed 39.133 pounds more than females. 
Both height and sex were significant predictors.
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight 
is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), 
where sex is coded as 1 = Male, 2 = Female, and height 
is measured in inches. Object of measurement 
increased 2.101 pounds for each inch of height and 
males weighed 39.133 pounds more than females. 
Both height and sex were significant predictors.
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight 
is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), 
where sex is coded as 1 = Male, 2 = Female, and height 
is measured in inches. Object of measurement 
increased 2.101 pounds for each inch of height and 
males weighed 39.133 pounds more than females. 
Both height and sex were significant predictors.
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight 
is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), 
where sex is coded as 1 = Male, 2 = Female, and height 
is measured in inches. Participant’s weight increased 
2.101 pounds for each inch of height and males 
weighed 39.133 pounds more than females. Both 
height and sex were significant predictors.
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight 
is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), 
where sex is coded as 1 = Male, 2 = Female, and height 
is measured in inches. Participant’s weight increased 
2.101 pounds for each inch of height and males 
weighed 39.133 pounds more than females. Both 
height and sex were significant predictors of weight.
A multiple linear regression was calculated to predict 
weight based on their height and sex. A significant 
regression equation was found (F(2, 13) = 981.202, p < 
.000), with an R2 of .993. Participants’ predicted weight 
is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), 
where sex is coded as 1 = Male, 2 = Female, and height 
is measured in inches. Participant’s weight increased 
2.101 pounds for each inch of height and males 
weighed 39.133 pounds more than females. Both 
height and sex were significant predictors of weight.

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Reporting a multiple linear regression in apa

  • 1. Reporting a Multiple Linear Regression in APA Format
  • 2. Note – the examples in this presentation come from, Cronk, B. C. (2012). How to Use SPSS Statistics: A Step-by-step Guide to Analysis and Interpretation. Pyrczak Pub.
  • 4. DV = Dependent Variable IV = Independent Variable
  • 5. DV = Dependent Variable IV = Independent Variable A multiple linear regression was calculated to predict [DV] based on [IV1] and [IV2]. A significant regression equation was found (F(_,__) = ___.___, p < .___), with an R2 of .___. Participants’ predicted [DV] is equal to __.___ – __.___ (IV1) + _.___ (IV2), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured as __________. Object of measurement increased _.__ [DV unit of measure] for each [IV1 unit of measure] and _.__ for each [IV2 unit of measure]. Both [IV1] and [IV2] were significant predictors of [DV].
  • 6. Wow, that’s a lot. Let’s break it down using the following example:
  • 7. Wow, that’s a lot. Let’s break it down using the following example: You have been asked to investigate the degree to which height and sex predicts weight.
  • 8. Wow, that’s a lot. Let’s break it down using the following example: You have been asked to investigate the degree to which height and sex predicts weight.
  • 9. Wow, that’s a lot. Let’s break it down using the following example: You have been asked to investigate the degree to which height and sex predicts weight. &
  • 10. Wow, that’s a lot. Let’s break it down using the following example: You have been asked to investigate the degree to which height and sex predicts weight. &
  • 11. Let’s begin with the first part of the template:
  • 12. A multiple linear regression was calculated to predict [DV] based on their [IV1] and [IV2].
  • 13. A multiple linear regression was calculated to predict [DV] based on their [IV1] and [IV2]. You have been asked to investigate the degree to which height and sex predicts weight.
  • 14. A multiple linear regression was calculated to predict weight based on their [IV1] and [IV2]. You have been asked to investigate the degree to which height and sex predicts weight.
  • 15. A multiple linear regression was calculated to predict weight based on their height and [IV2]. You have been asked to investigate the degree to which height and sex predicts weight.
  • 16. A multiple linear regression was calculated to predict weight based on their height and sex. You have been asked to investigate the degree to which height and sex predicts weight.
  • 17. Now onto the second part of the template:
  • 18. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(_,__) = __.___, p < .___), with an R2 of .____.
  • 19. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(_,__) = ___.___, p < .___), with an R2 of .___.
  • 20. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(_,__) = ___.___, p < .___), with an R2 of .___. Here’s the output:
  • 21. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(_,__) = ___.___, p < .___), with an R2 of .___. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1 .997a .993 .992 2.29571 ANOVAa Model Sum of Squares df Mean Squares F Sig. 1. Regression Residual Total 10342.424 68.514 10410.938 2 13 15 5171.212 5.270 981.202 .000a Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 22. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2,__) = ___.___, p < .___), with an R2 of .___. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1 .997a .993 .992 2.29571 ANOVAa Model Sum of Squares df Mean Squares F Sig. 1. Regression Residual Total 10342.424 68.514 10410.938 2 13 15 5171.212 5.270 981.202 .000a Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 23. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = ___.___, p < .___), with an R2 of .___. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1 .997a .993 .992 2.29571 ANOVAa Model Sum of Squares df Mean Squares F Sig. 1. Regression Residual Total 10342.424 68.514 10410.938 2 13 15 5171.212 5.270 981.202 .000a Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 24. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .___), with an R2 of .___. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1 .997a .993 .992 2.29571 ANOVAa Model Sum of Squares df Mean Squares F Sig. 1. Regression Residual Total 10342.424 68.514 10410.938 2 13 15 5171.212 5.270 981.202 .000a Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 25. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .___. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1 .997a .993 .992 2.29571 ANOVAa Model Sum of Squares df Mean Squares F Sig. 1. Regression Residual Total 10342.424 68.514 10410.938 2 13 15 5171.212 5.270 981.202 .000a Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 26. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1 .997a .993 .992 2.29571 ANOVAa Model Sum of Squares df Mean Squares F Sig. 1. Regression Residual Total 10342.424 68.514 10410.938 2 13 15 5171.212 5.270 981.202 .000a Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 27. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Now for the next part of the template:
  • 28. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted [DV] is equal to __.___ + __.___ (IV2) + _.___ (IV1), where [IV2] is coded or measured as _____________, and [IV1] is coded or measured __________.
  • 29. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted [DV] is equal to __.___ + __.___ (IV1) + _.___ (IV2), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured __________. ANOVAa Model Sum of Squares df Mean Squares F Sig. 1. Regression Residual Total 10342.424 68.514 10410.938 2 13 15 5171.212 5.270 981.202 .000a Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 30. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted [DV] is equal to __.___ + __.___ (IV1) + _.___ (IV2), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 31. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to __.___ + __.___ (IV1) + _.___ (IV2), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 32. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 + __.___ (IV1) + _.___ (IV2), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 33. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (IV1) + _.___ (IV1), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 34. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + _.___ (IV1), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 35. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (IV1), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 36. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where [IV1] is coded or measured as _____________, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 37. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded or measured as _____________, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 38. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and [IV2] is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 39. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is coded or measured __________. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 40. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 41. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Independent Variable1: Height Independent Variable2: Sex Dependent Variable: Weight Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 42. Now for the second to last portion of the template:
  • 43. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches.
  • 44. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Object of measurement increased _.__ [DV unit of measure] for each [IV1 unit of measure] and _.__ for each [IV2 unit of measure].
  • 45. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Object of measurement increased _.__ [DV unit of measure] for each [IV1 unit of measure] and _.__ for each [IV2 unit of measure]. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 46. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased _.__ [DV unit of measure] for each [IV1 unit of measure] and _.__ for each [IV2 unit of measure]. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 47. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 [DV unit of measure] for each [IV1 unit of measure] and _.__ for each [IV2 unit of measure]. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 48. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each [IV1 unit of measure] and _.__ for each [IV2 unit of measure]. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 49. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and _.__ for each [IV2 unit of measure]. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 50. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 51. Finally, the last part of the template:
  • 52. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females.
  • 53. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both [IV1] and [IV2] were significant predictors of [DV].
  • 54. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both [IV1] and [IV2] were significant predictors of [DV]. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 55. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and [IV2] were significant predictors of [DV]. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 56. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors of [DV]. Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 57. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors of [DV]. . Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 58. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors of weight. . Coefficientsa Model Unstandardized Coefficients Standardized Coefficients B St. Error Beta t Sig. 1. (Constant) Height Sex 47.138 2.101 -39.133 14.843 .198 1.501 .312 -7.67 -3.176 10.588 -25.071 .007 .000 .000
  • 60. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Object of measurement increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors.
  • 61. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Object of measurement increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors.
  • 62. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Object of measurement increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors.
  • 63. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors.
  • 64. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors of weight.
  • 65. A multiple linear regression was calculated to predict weight based on their height and sex. A significant regression equation was found (F(2, 13) = 981.202, p < .000), with an R2 of .993. Participants’ predicted weight is equal to 47.138 – 39.133 (SEX) + 2.101 (HEIGHT), where sex is coded as 1 = Male, 2 = Female, and height is measured in inches. Participant’s weight increased 2.101 pounds for each inch of height and males weighed 39.133 pounds more than females. Both height and sex were significant predictors of weight.