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Case study to identify risky loan applicants and understand factors that contribute to a loan default.

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Lending Club Case Study

Goals of data analysis:

Lending loans to ‘risky’ applicants is the largest source of financial loss
(called credit loss). The credit loss is the amount of money lost by the lender 
when the borrower refusesto pay or runs away with the money owed.  

The main objective is to be able to identify these risky loan applicants, 
then such loans can be reduced thereby cutting down the amount of credit loss. 
Identification of such applicants using EDA is the aim of this case study.   

Perform an analysis to understand the driving factors (or driver variables)
behind loan default, i.e.the variables which are strong indicators of default.  
The company can utilise this knowledge for its portfolio and risk assessment. 

Step 1: Data Cleaning 1

Step 2: Univariate Analysis

Step 3: Segemented Univariate Analysis

Step 4: Bivaraiate/Multivariate Analysis

Step 5: Results

Contributors

  • Anushka Paradkar
  • Ritesh Vesalapu
Developed as part of the Exloratory Data Analysis Module required for Post Graduate Diploma in Machine Learning and AI - IIIT,Bangalore.