SlideShare a Scribd company logo
1 of 21
Hatch, Match and Dispatch:
Examining the relationship between student intent,
expectations, behaviours and outcomes in six Coursera
MOOCs at the University of Toronto
The Dream Team
Bodong Chen (@bodongchen)
Stian Håklev (@houshuang)
William Heikoop
Laurie Harrison
Hedieh Najafi
Carol Rolheiser
Chris Teplovs (@cteplovs)
| Open UToronto

| Problemshift Inc.
About Open UToronto MOOC Initiative
• University of Toronto is committed to exploring new ways of
teaching and sharing knowledge
• Supporting research within the MOOC arena is a key component of
the Open Utoronto initiative.
• This project is part of a broader series of research studies that aim
to investigate:
◦
◦
◦

student demographics and learning goals
pedagogical approaches and design factors
patterns of engagement and learning among participants

| Open UToronto
Problemshift Inc.
A small, privately held Canadian company that
specializes in the research, design and
development of analytics-driven technology.

| Problemshift Inc.
Research Objectives
In the context of 6 University of Toronto MOOCs,
we examine:
Student intentions, goals and motivation (Hatch)
and their relationship (Match) to student behavior
and student performance based on formative and
summative assessment (Dispatch)

| Open UToronto

| Problemshift Inc.
Research Design
Multiple case study of six MOOCs:
• Aboriginal Worldviews and Education
• Introduction to Psychology
• Learn to Program: The Fundamentals
• Learn to Program: Crafting Quality Code
• The Social Context of Mental Health and Illness
• Statistics: Making Sense of Data
| Open UToronto

| Problemshift Inc.
Research Design
Multiple case study of six MOOCs:
• Aboriginal Worldviews and Education
• Introduction to Psychology
• Learn to Program: The Fundamentals
• Learn to Program: Crafting Quality Code
• The Social Context of Mental Health and Illness
• Statistics: Making Sense of Data
| Open UToronto

| Problemshift Inc.
Data Sources
1. Entry Survey (demographic info, motivation,
expected engagement)
2. Student behaviour data (clickstream data)
3. Outcome data (quiz scores, final grades)
4. Exit survey
5. Instructor interviews

| Open UToronto

| Problemshift Inc.
Data Sources
1. Entry Survey (demographic info, motivation,
expected engagement)
2. Student behavior data (clickstream data)
3. Outcome data (quiz scores, final grades)
4. Exit survey
5. Instructor interviews

| Open UToronto

| Problemshift Inc.
Data Analysis
Part I: Entry survey (n=70,418 for all MOOCs)
Principal component analysis (PCA) of surveys
to
reduce complexity of categorization.
Two axes: “betterment” and “enjoyment”
Part II: Clickstream data (n=16,900,926 events for
Introductory Psychology only)
Sequential pattern mining
Part III: Comparing frequent patterns from Part II
based on classification from Part I
| Open UToronto

| Problemshift Inc.
Data Analysis Part Ia:
Entry Surveys

| Open UToronto

| Problemshift Inc.
Data Analysis Part Ib: Principal
Components Analysis of Survey Data

| Open UToronto

| Problemshift Inc.
Data Analysis Part Ic: PCA continued

| Open UToronto

| Problemshift Inc.
Data Analysis Part Ic: PCA continued

| Open UToronto

| Problemshift Inc.
Data Analysis Part Ic: PCA continued
BE

be

Be

“Enjoyment”

bE

“Betterment”

| Open UToronto

| Problemshift Inc.
Data Analysis Part IIa: Clickstream Data
Info from Coursera

This is what clickstream
data looks like

| Open UToronto

| Problemshift Inc.
Data Analysis Part IIb: Clickstream Data
Wrangling Workflow
1. Raw Clickstream
Hadoop & Hive

2. Cleaned
Clickstream

Python

4,804,167
transactions
58,691
sequences

| Open UToronto

3. “Buckets”

| Problemshift Inc.
Data Analysis Part IIc: Clickstream Analysis
(Sequential Pattern Mining)
…we extract
frequently occurring
sequences
Using the ‘arulesSequences’
package in R, which
implements Zaki (2001)…

M. J. Zaki. (2001). SPADE: An
Efficient Algorithm for Mining
Frequent Sequences.
Machine Learning Journal,
42, 31–60.

| Open UToronto

| Problemshift Inc.
Results (so far)
We compare
different
categories,
similar to
approach
taken by
Sabourin,
Mott &
Lester, 2013

| Open UToronto

Comparing the prevalence of
frequently occurring
sequences across the four
partitions (BE, Be, bE, and be),
we see that “be” shows more
“return to outline” behaviours
and less engagement with
forums.

| Problemshift Inc.
Next Steps
•
•
•
•

Examine outcome measures
Repeat with other MOOCs
Refine feature identification
Better i-support and s-support calculations

| Open UToronto

| Problemshift Inc.
For more information visit
open.utoronto.ca
www.problemshift.com

More Related Content

What's hot

Using data (analytics and analysis) to guide (e)teaching and (e)learning (upd...
Using data (analytics and analysis) to guide (e)teaching and (e)learning (upd...Using data (analytics and analysis) to guide (e)teaching and (e)learning (upd...
Using data (analytics and analysis) to guide (e)teaching and (e)learning (upd...Poh-Sun Goh
 
Input from stakeholders for a Learning Analytics for Learning Design tool
Input from stakeholders for a Learning Analytics for Learning Design toolInput from stakeholders for a Learning Analytics for Learning Design tool
Input from stakeholders for a Learning Analytics for Learning Design toolMarcel Schmitz
 
Methodological issues in research on MOOCs - ECEL2014
Methodological issues in research on MOOCs - ECEL2014Methodological issues in research on MOOCs - ECEL2014
Methodological issues in research on MOOCs - ECEL2014Juliana Elisa Raffaghelli
 
Research Trends: Qualitative Analysis in CSCL_Heisawn
Research Trends: Qualitative Analysis in CSCL_HeisawnResearch Trends: Qualitative Analysis in CSCL_Heisawn
Research Trends: Qualitative Analysis in CSCL_HeisawnMerlien Institute
 
LAK15 panel - European Perspectives
 LAK15 panel - European Perspectives LAK15 panel - European Perspectives
LAK15 panel - European PerspectivesLACE Project
 
Online survey tools ppt 30-01-2016
Online survey tools ppt 30-01-2016Online survey tools ppt 30-01-2016
Online survey tools ppt 30-01-2016Vasantha Raju N
 
Using Learning Analytics to Assess Innovation & Improve Student Achievement
Using Learning Analytics to Assess Innovation & Improve Student Achievement Using Learning Analytics to Assess Innovation & Improve Student Achievement
Using Learning Analytics to Assess Innovation & Improve Student Achievement John Whitmer, Ed.D.
 
Investigating relationship: online activity, grades, learning strategies
Investigating relationship: online activity, grades, learning strategiesInvestigating relationship: online activity, grades, learning strategies
Investigating relationship: online activity, grades, learning strategiesMarcel Schmitz
 
Getting to grips with TESTA methods
Getting to grips with TESTA methodsGetting to grips with TESTA methods
Getting to grips with TESTA methodsTansy Jessop
 
IT3010 Lecture Design and Creation
IT3010 Lecture Design and CreationIT3010 Lecture Design and Creation
IT3010 Lecture Design and CreationBabakFarshchian
 
Open Assessment In Metal Risks
Open Assessment In Metal RisksOpen Assessment In Metal Risks
Open Assessment In Metal Risksguest4d312e0
 
Online assessment and data analytics - Peter Tan - Institute of Technical Edu...
Online assessment and data analytics - Peter Tan - Institute of Technical Edu...Online assessment and data analytics - Peter Tan - Institute of Technical Edu...
Online assessment and data analytics - Peter Tan - Institute of Technical Edu...Blackboard APAC
 
Title IX: A Survey for Institutions of Higher Education
Title IX: A Survey for Institutions of Higher EducationTitle IX: A Survey for Institutions of Higher Education
Title IX: A Survey for Institutions of Higher EducationHR ACUITY LLC
 
Comparative and Non-Comparative
Comparative and Non-Comparative Comparative and Non-Comparative
Comparative and Non-Comparative 61820_62133
 
USING LEARNING ANALYTICS TO PREDICT STUDENTS’ PERFORMANCE IN MOODLE LMS
USING LEARNING ANALYTICS TO PREDICT STUDENTS’ PERFORMANCE IN MOODLE LMSUSING LEARNING ANALYTICS TO PREDICT STUDENTS’ PERFORMANCE IN MOODLE LMS
USING LEARNING ANALYTICS TO PREDICT STUDENTS’ PERFORMANCE IN MOODLE LMSAfrican Virtual University
 

What's hot (19)

Using data (analytics and analysis) to guide (e)teaching and (e)learning (upd...
Using data (analytics and analysis) to guide (e)teaching and (e)learning (upd...Using data (analytics and analysis) to guide (e)teaching and (e)learning (upd...
Using data (analytics and analysis) to guide (e)teaching and (e)learning (upd...
 
Input from stakeholders for a Learning Analytics for Learning Design tool
Input from stakeholders for a Learning Analytics for Learning Design toolInput from stakeholders for a Learning Analytics for Learning Design tool
Input from stakeholders for a Learning Analytics for Learning Design tool
 
Methodological issues in research on MOOCs - ECEL2014
Methodological issues in research on MOOCs - ECEL2014Methodological issues in research on MOOCs - ECEL2014
Methodological issues in research on MOOCs - ECEL2014
 
Research Trends: Qualitative Analysis in CSCL_Heisawn
Research Trends: Qualitative Analysis in CSCL_HeisawnResearch Trends: Qualitative Analysis in CSCL_Heisawn
Research Trends: Qualitative Analysis in CSCL_Heisawn
 
LAK15 panel - European Perspectives
 LAK15 panel - European Perspectives LAK15 panel - European Perspectives
LAK15 panel - European Perspectives
 
Online survey tools ppt 30-01-2016
Online survey tools ppt 30-01-2016Online survey tools ppt 30-01-2016
Online survey tools ppt 30-01-2016
 
Using Learning Analytics to Assess Innovation & Improve Student Achievement
Using Learning Analytics to Assess Innovation & Improve Student Achievement Using Learning Analytics to Assess Innovation & Improve Student Achievement
Using Learning Analytics to Assess Innovation & Improve Student Achievement
 
Investigating relationship: online activity, grades, learning strategies
Investigating relationship: online activity, grades, learning strategiesInvestigating relationship: online activity, grades, learning strategies
Investigating relationship: online activity, grades, learning strategies
 
Assigned task final
Assigned task finalAssigned task final
Assigned task final
 
A modelling language for transparency requirements in business information sy...
A modelling language for transparency requirements in business information sy...A modelling language for transparency requirements in business information sy...
A modelling language for transparency requirements in business information sy...
 
Getting to grips with TESTA methods
Getting to grips with TESTA methodsGetting to grips with TESTA methods
Getting to grips with TESTA methods
 
IT3010 Lecture Design and Creation
IT3010 Lecture Design and CreationIT3010 Lecture Design and Creation
IT3010 Lecture Design and Creation
 
Open Assessment In Metal Risks
Open Assessment In Metal RisksOpen Assessment In Metal Risks
Open Assessment In Metal Risks
 
Online assessment and data analytics - Peter Tan - Institute of Technical Edu...
Online assessment and data analytics - Peter Tan - Institute of Technical Edu...Online assessment and data analytics - Peter Tan - Institute of Technical Edu...
Online assessment and data analytics - Peter Tan - Institute of Technical Edu...
 
Title IX: A Survey for Institutions of Higher Education
Title IX: A Survey for Institutions of Higher EducationTitle IX: A Survey for Institutions of Higher Education
Title IX: A Survey for Institutions of Higher Education
 
Comparative and Non-Comparative
Comparative and Non-Comparative Comparative and Non-Comparative
Comparative and Non-Comparative
 
SOC2002 Lecture 1
SOC2002 Lecture 1SOC2002 Lecture 1
SOC2002 Lecture 1
 
Learning Analytics
Learning AnalyticsLearning Analytics
Learning Analytics
 
USING LEARNING ANALYTICS TO PREDICT STUDENTS’ PERFORMANCE IN MOODLE LMS
USING LEARNING ANALYTICS TO PREDICT STUDENTS’ PERFORMANCE IN MOODLE LMSUSING LEARNING ANALYTICS TO PREDICT STUDENTS’ PERFORMANCE IN MOODLE LMS
USING LEARNING ANALYTICS TO PREDICT STUDENTS’ PERFORMANCE IN MOODLE LMS
 

Similar to Hatch, Match and Dispatch MRI13 Presentation

Learning Analytics – Challenges arising from a current review of LA use
Learning Analytics – Challenges arising from a current review of LA useLearning Analytics – Challenges arising from a current review of LA use
Learning Analytics – Challenges arising from a current review of LA useRiina Vuorikari
 
Measuring Our Impact: The Open.Michigan Initiative
Measuring Our Impact: The Open.Michigan InitiativeMeasuring Our Impact: The Open.Michigan Initiative
Measuring Our Impact: The Open.Michigan InitiativeEmily Puckett Rodgers
 
Learning Analytics – Research challenges arising from a current review of LA use
Learning Analytics – Research challenges arising from a current review of LA useLearning Analytics – Research challenges arising from a current review of LA use
Learning Analytics – Research challenges arising from a current review of LA useRiina Vuorikari
 
Jisc learning analytics service updates
Jisc learning analytics service updatesJisc learning analytics service updates
Jisc learning analytics service updatesJisc
 
The power of learning analytics to measure learning gains: an OU, Surrey and ...
The power of learning analytics to measure learning gains: an OU, Surrey and ...The power of learning analytics to measure learning gains: an OU, Surrey and ...
The power of learning analytics to measure learning gains: an OU, Surrey and ...Bart Rienties
 
Using Analytics to Improve Student Success
Using Analytics to Improve Student SuccessUsing Analytics to Improve Student Success
Using Analytics to Improve Student SuccessMatthew D. Pistilli
 
Evaluation Of Research Methods And Data Collection A...
Evaluation Of Research Methods And Data Collection A...Evaluation Of Research Methods And Data Collection A...
Evaluation Of Research Methods And Data Collection A...Ashley Thomas
 
Learning Analytics In Higher Education: Struggles & Successes (Part 2)
Learning Analytics In Higher Education: Struggles & Successes (Part 2)Learning Analytics In Higher Education: Struggles & Successes (Part 2)
Learning Analytics In Higher Education: Struggles & Successes (Part 2)Lambda Solutions
 
8 - PPT - Action Research - PhD R4 Qualitative Track.pptx
8 - PPT - Action Research - PhD R4 Qualitative Track.pptx8 - PPT - Action Research - PhD R4 Qualitative Track.pptx
8 - PPT - Action Research - PhD R4 Qualitative Track.pptxyvettelopez21
 
EMMA Summer School - Rebecca Ferguson - Learning design and learning analytic...
EMMA Summer School - Rebecca Ferguson - Learning design and learning analytic...EMMA Summer School - Rebecca Ferguson - Learning design and learning analytic...
EMMA Summer School - Rebecca Ferguson - Learning design and learning analytic...EUmoocs
 
Learning design and learning analytics
Learning design and learning analyticsLearning design and learning analytics
Learning design and learning analyticsRebecca Ferguson
 
Visualizing Data: Infographic Assignments across the SWK Curriculum
Visualizing Data: Infographic Assignments across the SWK CurriculumVisualizing Data: Infographic Assignments across the SWK Curriculum
Visualizing Data: Infographic Assignments across the SWK CurriculumLaurel Hitchcock
 
A HYBRID CLASSIFICATION ALGORITHM TO CLASSIFY ENGINEERING STUDENTS’ PROBLEMS ...
A HYBRID CLASSIFICATION ALGORITHM TO CLASSIFY ENGINEERING STUDENTS’ PROBLEMS ...A HYBRID CLASSIFICATION ALGORITHM TO CLASSIFY ENGINEERING STUDENTS’ PROBLEMS ...
A HYBRID CLASSIFICATION ALGORITHM TO CLASSIFY ENGINEERING STUDENTS’ PROBLEMS ...IJDKP
 
Beyond MOOCS – A Catalyst for Change
Beyond MOOCS – A Catalyst for ChangeBeyond MOOCS – A Catalyst for Change
Beyond MOOCS – A Catalyst for ChangeFutureLearn FLAN
 
Learning analytics suppliers briefing-april16
Learning analytics suppliers briefing-april16Learning analytics suppliers briefing-april16
Learning analytics suppliers briefing-april16Paul Bailey
 
Visualizing Data:  Infographics for Teaching and Learning about Social Welfare
Visualizing Data:  Infographics for Teaching and Learning about Social WelfareVisualizing Data:  Infographics for Teaching and Learning about Social Welfare
Visualizing Data:  Infographics for Teaching and Learning about Social WelfareLaurel Hitchcock
 
Research Evaluation And Data Collection Methods
Research Evaluation And Data Collection MethodsResearch Evaluation And Data Collection Methods
Research Evaluation And Data Collection MethodsJessica Robles
 
Exploring the student digital experience
Exploring the student digital experienceExploring the student digital experience
Exploring the student digital experienceJisc
 

Similar to Hatch, Match and Dispatch MRI13 Presentation (20)

Leading with Data: Impacting Change on Scale featuring Belinda Tynan
Leading with Data: Impacting Change on Scale featuring Belinda TynanLeading with Data: Impacting Change on Scale featuring Belinda Tynan
Leading with Data: Impacting Change on Scale featuring Belinda Tynan
 
Learning Analytics – Challenges arising from a current review of LA use
Learning Analytics – Challenges arising from a current review of LA useLearning Analytics – Challenges arising from a current review of LA use
Learning Analytics – Challenges arising from a current review of LA use
 
Measuring Our Impact: The Open.Michigan Initiative
Measuring Our Impact: The Open.Michigan InitiativeMeasuring Our Impact: The Open.Michigan Initiative
Measuring Our Impact: The Open.Michigan Initiative
 
Learning Analytics – Research challenges arising from a current review of LA use
Learning Analytics – Research challenges arising from a current review of LA useLearning Analytics – Research challenges arising from a current review of LA use
Learning Analytics – Research challenges arising from a current review of LA use
 
Jisc learning analytics service updates
Jisc learning analytics service updatesJisc learning analytics service updates
Jisc learning analytics service updates
 
The power of learning analytics to measure learning gains: an OU, Surrey and ...
The power of learning analytics to measure learning gains: an OU, Surrey and ...The power of learning analytics to measure learning gains: an OU, Surrey and ...
The power of learning analytics to measure learning gains: an OU, Surrey and ...
 
Precon presentation 2015
Precon presentation 2015Precon presentation 2015
Precon presentation 2015
 
Using Analytics to Improve Student Success
Using Analytics to Improve Student SuccessUsing Analytics to Improve Student Success
Using Analytics to Improve Student Success
 
Evaluation Of Research Methods And Data Collection A...
Evaluation Of Research Methods And Data Collection A...Evaluation Of Research Methods And Data Collection A...
Evaluation Of Research Methods And Data Collection A...
 
Learning Analytics In Higher Education: Struggles & Successes (Part 2)
Learning Analytics In Higher Education: Struggles & Successes (Part 2)Learning Analytics In Higher Education: Struggles & Successes (Part 2)
Learning Analytics In Higher Education: Struggles & Successes (Part 2)
 
8 - PPT - Action Research - PhD R4 Qualitative Track.pptx
8 - PPT - Action Research - PhD R4 Qualitative Track.pptx8 - PPT - Action Research - PhD R4 Qualitative Track.pptx
8 - PPT - Action Research - PhD R4 Qualitative Track.pptx
 
EMMA Summer School - Rebecca Ferguson - Learning design and learning analytic...
EMMA Summer School - Rebecca Ferguson - Learning design and learning analytic...EMMA Summer School - Rebecca Ferguson - Learning design and learning analytic...
EMMA Summer School - Rebecca Ferguson - Learning design and learning analytic...
 
Learning design and learning analytics
Learning design and learning analyticsLearning design and learning analytics
Learning design and learning analytics
 
Visualizing Data: Infographic Assignments across the SWK Curriculum
Visualizing Data: Infographic Assignments across the SWK CurriculumVisualizing Data: Infographic Assignments across the SWK Curriculum
Visualizing Data: Infographic Assignments across the SWK Curriculum
 
A HYBRID CLASSIFICATION ALGORITHM TO CLASSIFY ENGINEERING STUDENTS’ PROBLEMS ...
A HYBRID CLASSIFICATION ALGORITHM TO CLASSIFY ENGINEERING STUDENTS’ PROBLEMS ...A HYBRID CLASSIFICATION ALGORITHM TO CLASSIFY ENGINEERING STUDENTS’ PROBLEMS ...
A HYBRID CLASSIFICATION ALGORITHM TO CLASSIFY ENGINEERING STUDENTS’ PROBLEMS ...
 
Beyond MOOCS – A Catalyst for Change
Beyond MOOCS – A Catalyst for ChangeBeyond MOOCS – A Catalyst for Change
Beyond MOOCS – A Catalyst for Change
 
Learning analytics suppliers briefing-april16
Learning analytics suppliers briefing-april16Learning analytics suppliers briefing-april16
Learning analytics suppliers briefing-april16
 
Visualizing Data:  Infographics for Teaching and Learning about Social Welfare
Visualizing Data:  Infographics for Teaching and Learning about Social WelfareVisualizing Data:  Infographics for Teaching and Learning about Social Welfare
Visualizing Data:  Infographics for Teaching and Learning about Social Welfare
 
Research Evaluation And Data Collection Methods
Research Evaluation And Data Collection MethodsResearch Evaluation And Data Collection Methods
Research Evaluation And Data Collection Methods
 
Exploring the student digital experience
Exploring the student digital experienceExploring the student digital experience
Exploring the student digital experience
 

Recently uploaded

Proudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxProudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxthorishapillay1
 
Science 7 Quarter 4 Module 2: Natural Resources.pptx
Science 7 Quarter 4 Module 2: Natural Resources.pptxScience 7 Quarter 4 Module 2: Natural Resources.pptx
Science 7 Quarter 4 Module 2: Natural Resources.pptxMaryGraceBautista27
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management systemChristalin Nelson
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptxmary850239
 
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfAMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfphamnguyenenglishnb
 
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYKayeClaireEstoconing
 
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Celine George
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
How to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPHow to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPCeline George
 
Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)cama23
 
Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Mark Reed
 
Judging the Relevance and worth of ideas part 2.pptx
Judging the Relevance  and worth of ideas part 2.pptxJudging the Relevance  and worth of ideas part 2.pptx
Judging the Relevance and worth of ideas part 2.pptxSherlyMaeNeri
 
ENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomnelietumpap1
 
Choosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for ParentsChoosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for Parentsnavabharathschool99
 
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...Nguyen Thanh Tu Collection
 
How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17Celine George
 
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdfLike-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdfMr Bounab Samir
 
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...JhezDiaz1
 
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...Postal Advocate Inc.
 
4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptxmary850239
 

Recently uploaded (20)

Proudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxProudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptx
 
Science 7 Quarter 4 Module 2: Natural Resources.pptx
Science 7 Quarter 4 Module 2: Natural Resources.pptxScience 7 Quarter 4 Module 2: Natural Resources.pptx
Science 7 Quarter 4 Module 2: Natural Resources.pptx
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management system
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx
 
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfAMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
 
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
 
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
 
How to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPHow to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERP
 
Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)
 
Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)
 
Judging the Relevance and worth of ideas part 2.pptx
Judging the Relevance  and worth of ideas part 2.pptxJudging the Relevance  and worth of ideas part 2.pptx
Judging the Relevance and worth of ideas part 2.pptx
 
ENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choom
 
Choosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for ParentsChoosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for Parents
 
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
 
How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17
 
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdfLike-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
 
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
 
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
 
4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx
 

Hatch, Match and Dispatch MRI13 Presentation

  • 1. Hatch, Match and Dispatch: Examining the relationship between student intent, expectations, behaviours and outcomes in six Coursera MOOCs at the University of Toronto
  • 2. The Dream Team Bodong Chen (@bodongchen) Stian Håklev (@houshuang) William Heikoop Laurie Harrison Hedieh Najafi Carol Rolheiser Chris Teplovs (@cteplovs) | Open UToronto | Problemshift Inc.
  • 3. About Open UToronto MOOC Initiative • University of Toronto is committed to exploring new ways of teaching and sharing knowledge • Supporting research within the MOOC arena is a key component of the Open Utoronto initiative. • This project is part of a broader series of research studies that aim to investigate: ◦ ◦ ◦ student demographics and learning goals pedagogical approaches and design factors patterns of engagement and learning among participants | Open UToronto
  • 4. Problemshift Inc. A small, privately held Canadian company that specializes in the research, design and development of analytics-driven technology. | Problemshift Inc.
  • 5. Research Objectives In the context of 6 University of Toronto MOOCs, we examine: Student intentions, goals and motivation (Hatch) and their relationship (Match) to student behavior and student performance based on formative and summative assessment (Dispatch) | Open UToronto | Problemshift Inc.
  • 6. Research Design Multiple case study of six MOOCs: • Aboriginal Worldviews and Education • Introduction to Psychology • Learn to Program: The Fundamentals • Learn to Program: Crafting Quality Code • The Social Context of Mental Health and Illness • Statistics: Making Sense of Data | Open UToronto | Problemshift Inc.
  • 7. Research Design Multiple case study of six MOOCs: • Aboriginal Worldviews and Education • Introduction to Psychology • Learn to Program: The Fundamentals • Learn to Program: Crafting Quality Code • The Social Context of Mental Health and Illness • Statistics: Making Sense of Data | Open UToronto | Problemshift Inc.
  • 8. Data Sources 1. Entry Survey (demographic info, motivation, expected engagement) 2. Student behaviour data (clickstream data) 3. Outcome data (quiz scores, final grades) 4. Exit survey 5. Instructor interviews | Open UToronto | Problemshift Inc.
  • 9. Data Sources 1. Entry Survey (demographic info, motivation, expected engagement) 2. Student behavior data (clickstream data) 3. Outcome data (quiz scores, final grades) 4. Exit survey 5. Instructor interviews | Open UToronto | Problemshift Inc.
  • 10. Data Analysis Part I: Entry survey (n=70,418 for all MOOCs) Principal component analysis (PCA) of surveys to reduce complexity of categorization. Two axes: “betterment” and “enjoyment” Part II: Clickstream data (n=16,900,926 events for Introductory Psychology only) Sequential pattern mining Part III: Comparing frequent patterns from Part II based on classification from Part I | Open UToronto | Problemshift Inc.
  • 11. Data Analysis Part Ia: Entry Surveys | Open UToronto | Problemshift Inc.
  • 12. Data Analysis Part Ib: Principal Components Analysis of Survey Data | Open UToronto | Problemshift Inc.
  • 13. Data Analysis Part Ic: PCA continued | Open UToronto | Problemshift Inc.
  • 14. Data Analysis Part Ic: PCA continued | Open UToronto | Problemshift Inc.
  • 15. Data Analysis Part Ic: PCA continued BE be Be “Enjoyment” bE “Betterment” | Open UToronto | Problemshift Inc.
  • 16. Data Analysis Part IIa: Clickstream Data Info from Coursera This is what clickstream data looks like | Open UToronto | Problemshift Inc.
  • 17. Data Analysis Part IIb: Clickstream Data Wrangling Workflow 1. Raw Clickstream Hadoop & Hive 2. Cleaned Clickstream Python 4,804,167 transactions 58,691 sequences | Open UToronto 3. “Buckets” | Problemshift Inc.
  • 18. Data Analysis Part IIc: Clickstream Analysis (Sequential Pattern Mining) …we extract frequently occurring sequences Using the ‘arulesSequences’ package in R, which implements Zaki (2001)… M. J. Zaki. (2001). SPADE: An Efficient Algorithm for Mining Frequent Sequences. Machine Learning Journal, 42, 31–60. | Open UToronto | Problemshift Inc.
  • 19. Results (so far) We compare different categories, similar to approach taken by Sabourin, Mott & Lester, 2013 | Open UToronto Comparing the prevalence of frequently occurring sequences across the four partitions (BE, Be, bE, and be), we see that “be” shows more “return to outline” behaviours and less engagement with forums. | Problemshift Inc.
  • 20. Next Steps • • • • Examine outcome measures Repeat with other MOOCs Refine feature identification Better i-support and s-support calculations | Open UToronto | Problemshift Inc.
  • 21. For more information visit open.utoronto.ca www.problemshift.com