Accurate and Interpretable Machine Learning for Transparent Pricing of Health Insurance Plans

Authors

  • Rohun Kshirsagar Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Li-Yen Hsu Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Charles H. Greenberg Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Matthew McClelland Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Anushadevi Mohan Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Wideet Shende Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Nicolas P. Tilmans Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Min Guo Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Ankit Chheda Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Meredith Trotter Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Shonket Ray Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA
  • Miguel Alvarado Lumiata Inc, 489 S. El Camino Real, San Mateo, CA 94402 USA

DOI:

https://doi.org/10.1609/aaai.v35i17.17776

Keywords:

Medical Informatics, Health Actuarial Data Science, Applied Machine Learning, Decision Support, AI System

Abstract

Health insurance companies cover half of the United States population through commercial employer-sponsored health plans and pay 1.2 trillion US dollars every year to cover medical expenses for their members. The actuary and underwriter roles at a health insurance company serve to assess which risks to take on and how to price those risks to ensure profitability of the organization. While Bayesian hierarchical models are the current standard in the industry to estimate risk, interest in machine learning as a way to improve upon these existing methods is increasing. Lumiata, a healthcare analytics company, ran a study with a large health insurance company in the United States. We evaluated the ability of machine learning models to predict the per member per month cost of employer groups in their next renewal period, especially those groups who will cost less than 95\% of what an actuarial model predicts (groups with "concession opportunities"). We developed a sequence of two models, an individual patient-level and an employer-group-level model, to predict the annual per member per month allowed amount for employer groups, based on a population of 14 million patients. Our models performed 20\% better than the insurance carrier's existing pricing model, and identified 84\% of the concession opportunities. This study demonstrates the application of a machine learning system to compute an accurate and fair price for health insurance products and analyzes how explainable machine learning models can exceed actuarial models' predictive accuracy while maintaining interpretability.

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Published

2021-05-18

How to Cite

Kshirsagar, R., Hsu, L.-Y., Greenberg, C. H., McClelland, M., Mohan, A., Shende, W., Tilmans, N. P., Guo, M., Chheda, A., Trotter, M., Ray, S., & Alvarado, M. (2021). Accurate and Interpretable Machine Learning for Transparent Pricing of Health Insurance Plans. Proceedings of the AAAI Conference on Artificial Intelligence, 35(17), 15127-15136. https://doi.org/10.1609/aaai.v35i17.17776

Issue

Section

IAAI Technical Track on Highly Innovative Applications of AI