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Abhishek M Shivalingaiah Pallavi Vijay Swaroop Prince Suraj Shyamasunder Vicky Wu

Intelligence Analytics Society's Analytics Challenge 2016

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Page 1: Intelligence Analytics Society's Analytics Challenge 2016

Abhishek M Shivalingaiah

Pallavi Vijay

Swaroop Prince

Suraj Shyamasunder

Vicky Wu

Page 2: Intelligence Analytics Society's Analytics Challenge 2016
Page 3: Intelligence Analytics Society's Analytics Challenge 2016

Good Data

Junk Data with Monthly income NA

Outliers Data with Debit ratio> 20 & <0

.05 12%

Records

Good Data Junk Data with Monthly income NA Outliers Data with Debit ratio> 20 & <0 .05

Page 4: Intelligence Analytics Society's Analytics Challenge 2016

-0.029424585

-0.01518111

-0.000401427

0.279798296

0.285326919

0.308343759

-0.05 0 0.05 0.1 0.15 0.2 0.25 0.3 0.35

NumberOfOpenCreditLinesAndLoans

NumberRealEstateLoansOrLines

RevolvingUtilizationOfUnsecuredLines

NumberOfTime30.59DaysPastDueNotWorse

NumberOfTime60.89DaysPastDueNotWorse

NumberOfTimes90DaysLate

Correlation between ‘Financially distressed in next 2

years variable’ and ‘all other variables’ individually

Page 5: Intelligence Analytics Society's Analytics Challenge 2016

60%

40%

Among people who have

crossed 90 days past Due date

63%

37%

Among people who have

60-89

days past due date

Probablity of Non Default Probablity of Financial distress in 2 next years

76%

24%

Among people with Revolving

Utilization of Unsecure lines>0.96

81%

19%

Among people who have 30 -59

day past due date

It can be observed that ,statistics drawn out of data also supports the correlation observed in the previous slide

with an accuracy of 40%,37%,24%,19% respectively, when calculated individually.

When each relevant variable is individually check for correlation with ‘Financially distressed in next 2

years’ variable

Page 6: Intelligence Analytics Society's Analytics Challenge 2016

DECISION TREEWhen all the variables are considered together, the below decision tree model can be used

in predicting who might face financial distress in next 2 years (Indicated by Red rectangle)

Page 7: Intelligence Analytics Society's Analytics Challenge 2016

39%

61%

Probabilitty that a person DOESN't default

Probability that a person defaults

Page 8: Intelligence Analytics Society's Analytics Challenge 2016
Page 9: Intelligence Analytics Society's Analytics Challenge 2016
Page 10: Intelligence Analytics Society's Analytics Challenge 2016