Insurance pricing on price comparison websites via reinforcement learning
Tanut Treetanthiploet, Yufei Zhang, Lukasz Szpruch, Isaac, Bowers-Barnard, Henrietta Ridley, James Hickey, Chris Pearce

TL;DR
This paper proposes a reinforcement learning framework for insurance pricing on price comparison websites, combining model-based and model-free methods to adapt to market dynamics and improve revenue.
Contribution
It introduces a hybrid RL approach that integrates offline training with online contextual bandit updates for effective insurance pricing.
Findings
The hybrid RL agent outperforms benchmark approaches in sample efficiency.
The methodology adapts well to dynamic market conditions.
It demonstrates superior cumulative reward compared to existing methods.
Abstract
The emergence of price comparison websites (PCWs) has presented insurers with unique challenges in formulating effective pricing strategies. Operating on PCWs requires insurers to strike a delicate balance between competitive premiums and profitability, amidst obstacles such as low historical conversion rates, limited visibility of competitors' actions, and a dynamic market environment. In addition to this, the capital intensive nature of the business means pricing below the risk levels of customers can result in solvency issues for the insurer. To address these challenges, this paper introduces reinforcement learning (RL) framework that learns the optimal pricing policy by integrating model-based and model-free methods. The model-based component is used to train agents in an offline setting, avoiding cold-start issues, while model-free algorithms are then employed in a contextual…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Transportation and Mobility Innovations · Consumer Market Behavior and Pricing
