AI RESEARCH

Insurance Pricing Optimization via Off-Policy Evaluation

arXiv CS.LG

ArXi:2605.28327v1 Announce Type: cross Traditional insurance pricing relies on risk-based principles that ensure actuarial fairness and solvency but do not explicitly account for policyholders' price sensitivity. We formulate insurance pricing as a decision-making problem and study it using tools from off-policy evaluation and stochastic control. We propose a kernelized inverse propensity score estimator that exploits local structure in the action space and yields variance reduction compared to the classical inverse propensity score estimator.