Insurance Risk Evaluation through Data Mining

Document Type

Abstract

Publication Date

5-1-2022

Abstract

In today’s data driven world, accurate insights from data are of prime importance to the success of insurance companies globally. This project applies data mining techniques to draw insights from a health insurance data set. Firstly, this project explores information available from the data using unsupervised learning. Secondly, significant emphasis is placed on supervised learning to investigate how different data mining algorithms and statistical analysis are useful in predicting the degree of risk associated with a particular applicant for an insurance policy. The algorithms are applied to real data with the goal of producing a predictive model that can accurately classify risk and eligibility of individuals.

Comments

Completed as part of the Computer Science Senior Capstone Project.

This document is currently not available here.

Share

COinS