Adaptive Pricing in Insurance: Generalized Linear Models and Gaussian Process Regression Approaches
Yuqing Zhang, Neil Walton

TL;DR
This paper introduces adaptive pricing models for insurance using generalized linear models and Gaussian process regression, balancing learning and revenue optimization, and analyzing their convergence and regret.
Contribution
It presents the first application of Gaussian Process regression to insurance pricing and develops adaptive algorithms with proven convergence properties.
Findings
Both models converge to optimal prices under suitable conditions.
The algorithms effectively balance exploration and exploitation.
Initial results indicate potential for online machine learning in insurance pricing.
Abstract
We study the application of dynamic pricing to insurance. We view this as an online revenue management problem where the insurance company looks to set prices to optimize the long-run revenue from selling a new insurance product. We develop two pricing models: an adaptive Generalized Linear Model (GLM) and an adaptive Gaussian Process (GP) regression model. Both balance between exploration, where we choose prices in order to learn the distribution of demands & claims for the insurance product, and exploitation, where we myopically choose the best price from the information gathered so far. The performance of the pricing policies is measured in terms of regret: the expected revenue loss caused by not using the optimal price. As is commonplace in insurance, we model demand and claims by GLMs. In our adaptive GLM design, we use the maximum quasi-likelihood estimation (MQLE) to estimate the…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Gaussian Processes and Bayesian Inference · Statistical Methods and Inference
MethodsGaussian Process
