HACKATHON powered by ANALYTICS VIDHYA
Your client is an Insurance company and they need your help in building a model to predict whether the policyholder (customer) will pay next premium on time or not.
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id : Unique ID of the policy
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perc_premium_paid_by_cash_credit : Percentage of premium amount paid by cash or credit card
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age_in_days : Age in days of policy holder
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Income : Monthly Income of policy holder
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Count_3-6_months_late : No of premiums late by 3 to 6 months
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Count_6-12_months_late : No of premiums late by 6 to 12 months
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Count_more_than_12_months_late : No of premiums late by more than 12 months
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application_underwriting_score : Underwriting Score of the applicant at the time of application (No applications under the score of 90 are insured)
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no_of_premiums_paid : Total premiums paid on time till now
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sourcing_channel : Sourcing channel for application
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residence_area_type : Area type of Residence (Urban/Rural)
target : 1 - premium paid on time , 0 - otherwise
Accuracy : 95.5%
AUC Score (Train): 0.882333
SECURED COMPETITION RANK - 9