Detecting Health Insurance Fraud: Reducing Costs for Both the Insurers and the Insured
( go to the article → https://nycdatascience.com/blog/student-works/detecting-health-insurance-fraud-reducing-costs-for-both-the-insurers-and-the-insured/ )
Github repo The Problem: Overwhelming Costs of Healthcare Fraud According to the Institute of Medicine, health insurance fraud is among the top 5 “Sources of Waste” in American Health Care spending (Shrank et al., 2019). A study published in the International Journal of Academic Medicine showed that the cost of litigation and risk management is […]
The post Detecting Health Insurance Fraud: Reducing Costs for Both the Insurers and the Insured first appeared on Data Science Blog.
March 24, 2021, 8:41 p.m.
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