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Amazon	Machine	Learning	Case	Study:	
Predic9ng	Customer	Churn	
Denis	V.	Batalov,	Solu9ons	Architect,	EMEA
Customer Churn
Machine Learning
Science	
• Computer	Science	
• Sta9s9cs	
• Neuroscience	
• Opera9ons	Research	
Ar9ficial	Intelligence	
• Rule	extrac9on	from	data	
• Inspired	by	human	learning	
• Adap9ve	algorithms	
Engineering	
• Training:	Data	à	Models	
• Predic9on:	Models	à	Forecast	
• Decision:	Forecast	à	Ac9ons
ML: Robotics
ML: Robotics
ML: Image Recognition
Supervised Learning
Supervised Learning
Input Outcome
Supervised Learning
Input Outcome
Input
Input
Input
Outcome
Outcome
Outcome
Supervised Learning
Input Outcome
Input
Input
Input
Outcome
Outcome
Outcome
Supervised
Learning
known historical data
Supervised Learning
Input Outcome
Input
Input
Input
Outcome
Outcome
Outcome
Supervised
Learning
Unseen Input Same Outcome
known historical data
Amazon Machine Learning Service
Amazon Machine Learning Service
Amazon Machine Learning Service
Amazon Machine Learning Service
Telco Churn Dataset
•  US telco customers, their cell phone plans and usage
•  21 attributes, 3333 rows:
•  Customer: State, Area_Code, Phone	
•  Plan: Intl_Plan, VMail_Plan	
•  Behavior: VMail_Messages, Day_Mins, Day_Calls,
Day_Charge, Eve_Mins, Eve_Calls, Eve_Charge,
Night_Mins, Night_Calls, Night_Charge, Intl_Mins,
Intl_Calls, Intl_Charge	
•  Other: Account_Length, CustServ_Calls, Churn
Telco Churn Dataset
•  US telco customers, their cell phone plans and usage
•  21 attributes, 3333 rows:
•  Customer: State, Area_Code, Phone	
•  Plan: Intl_Plan, VMail_Plan	
•  Behavior: VMail_Messages, Day_Mins, Day_Calls,
Day_Charge, Eve_Mins, Eve_Calls, Eve_Charge,
Night_Mins, Night_Calls, Night_Charge, Intl_Mins,
Intl_Calls, Intl_Charge	
•  Other: Account_Length, CustServ_Calls, Churn
Telco Churn Dataset
KS, 128, 415, 382-4657, 0, 1, 25, 265.100000, 110, 45.070000, 197.400000, 99,
16.780000, 244.700000, 91, 11.010000, 10.000000, 3, 2.700000, 1, 0
OH, 107, 415, 371-7191, 0, 1, 26, 161.600000, 123, 27.470000, 195.500000, 103,
16.620000, 254.400000, 103, 11.450000, 13.700000, 3, 3.700000, 1, 0
NJ, 137, 415, 358-1921, 0, 0, 0, 243.400000, 114, 41.380000, 121.200000, 110,
10.300000, 162.600000, 104, 7.320000, 12.200000, 5, 3.290000, 0, 0
OH, 84, 408, 375-9999, 1, 0, 0, 299.400000, 71, 50.900000, 61.900000, 88, 5.260000,
196.900000, 89, 8.860000, 6.600000, 7, 1.780000, 2, 0
OK, 75, 415, 330-6626, 1, 0, 0, 166.700000, 113, 28.340000, 148.300000, 122, 12.610000,
186.900000, 121, 8.410000, 10.100000, 3, 2.730000, 3, 0
AL, 118, 510, 391-8027, 1, 0, 0, 223.400000, 98, 37.980000, 220.600000, 101, 18.750000,
203.900000, 118, 9.180000, 6.300000, 6, 1.700000, 0, 0
Creating Datasource for Amazon ML
Creating Datasource for Amazon ML
Building the Amazon ML Model
Recipe
{ "groups": {
"NUMERIC_VARS_NORM":
"group('Intl_Charge','Night_Calls','Day_Calls','Eve_Calls','Eve_Mins','Int
l_Mins','VMail_Message','Intl_Calls','Day_Mins','Night_Mins','Day_Charge',
'Night_Charge','Eve_Charge','Account_Length')” },
"assignments": {},
"outputs": [
"ALL_BINARY",
"State",
"Area_Code",
"normalize(NUMERIC_VARS_NORM)",
"CustServ_Calls"
]
}
Recipe: normalize() function
Account_Length	 Normalized Value
128 0.808771865
107 -0.047574816
137 1.175777586
84 -0.985478323
75 -1.352484044
118 0.400987732
Building the Amazon ML Model
Cost of Errors
•  Cost of Customer Churn and Acquisition (false negative):
•  foregone cashflow
•  advertising costs
•  POS and sign-up admin costs
•  Customer Retention Cost (false + true positive)
•  Discounts
•  Phone upgrades
•  etc
Financial Outcome of Applying a Model
Prior Churn Churn Cost Cost without ML
14.49% $500.00 $72.46
False Negative True + False Pos Retention Cost Cost with ML
4.80% 26.40% $100.00 $50.40
Financial Outcome of Applying a Model
Prior Churn Churn Cost Cost without ML
14.49% $500.00 $72.46
False Negative True + False Pos Retention Cost Cost with ML
4.80% 26.40% $100.00 $50.40
•  $22.06 of savings per customer
•  With 100,000 customers over $2MM in savings with ML
@dbatalov

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Amazon Machine Learning Case Study: Predicting Customer Churn