sharmaroshan
Insurance-Claim-Prediction
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In this Data set we are Predicting the Insurance Claim by each user, Machine Learning algorithms for Regression analysis are used and Data Visualization are also performed to support Analysis.

Last updated May 15, 2026
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Insurance-Claim-Prediction

In this Data set we are Predicting the Insurance Claim by each user, Machine Learning algorithms for Regression analysis are used and Data Visualization are also performed to support Analysis.

Content

This is "Sample Insurance Claim Prediction Dataset" which based on "[Medical Cost Personal Datasets][1]" to update sample value on top.

age :

age of policyholder

sex:

gender of policy holder (female=0, male=1)

bmi:

Body mass index, providing an understanding of body, weights that are relatively high or low relative to height, objective index of body weight (kg / m ^ 2) using the ratio of height to weight, ideally 18.5 to 25

steps:

average walking steps per day of policyholder

children:

number of children / dependents of policyholder

smoker:

smoking state of policyholder (non-smoke=0;smoker=1)

region:

the residential area of policyholder in the US (northeast=0, northwest=1, southeast=2, southwest=3)

charges:

individual medical costs billed by health insurance

insuranceclaim:

yes=1, no=0
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