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Boosting CVaR Policy Optimization with Quantile Gradients

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arxiv 2601.22100 v3 pith:QXY2NOMK submitted 2026-01-29 cs.LG

Boosting CVaR Policy Optimization with Quantile Gradients

classification cs.LG
keywords cvarquantilepolicycvar-pgimprovesinefficiencyoptimizationsample
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Optimizing Conditional Value-at-risk (CVaR) using policy gradient (a.k.a CVaR-PG) faces significant challenges of sample inefficiency. This inefficiency stems from the fact that it focuses on tail-end performance and overlooks many sampled trajectories. We address this problem by augmenting CVaR with an expected quantile term. Quantile optimization admits a dynamic programming formulation that leverages all sampled data, thus improves sample efficiency. This does not alter the CVaR objective since CVaR corresponds to the expectation of quantile over the tail. Empirical results in domains with verifiable risk-averse behavior show that our algorithm within the Markovian policy class substantially improves upon CVaR-PG and consistently outperforms other existing methods.

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