AI RESEARCH
Zero Collapse: A Failure Mode of Policy Gradient Methods in Discontinuous Reward Environments
arXiv CS.LG
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ArXi:2605.30896v1 Announce Type: new Bidding in repeated auctions is a central challenge for reinforcement learning (RL), combining continuous control with the strategic complexities of digital advertising. While policy gradient and value-based methods seem well-suited for these settings, they often struggle with the discontinuous, "cliff-like" nature of auction reward landscapes. In a first-price auction, for example, a bidder receives zero reward until they cross a specific threshold, after which the reward decreases as the bid increases.