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arxiv: 2509.03456 · v2 · pith:7C6GE53Mnew · submitted 2025-09-03 · 📊 stat.ML · cs.LG

Off-Policy Learning in Large Action Spaces: Optimization Matters More Than Estimation

classification 📊 stat.ML cs.LG
keywords optimizationactionoff-policybetterestimatorslargelearningpolicies
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Off-policy evaluation (OPE) and off-policy learning (OPL) are foundational for decision-making in offline contextual bandits. Recent advances in OPL primarily optimize OPE estimators with improved statistical properties, assuming that better estimators inherently yield superior policies. Although theoretically justified, this estimator-centric approach neglects a critical practical obstacle: challenging optimization landscapes. In this paper, we provide theoretical insights and empirical evidence showing that current OPL methods encounter severe optimization issues, particularly as the action space grows. We show that estimator-aware policy parametrization can mitigate, but not fully resolve, optimization challenges. Building on this, we explore simpler weighted log-likelihood objectives and demonstrate that they enjoy substantially better optimization properties and still recover competitive, often superior, learned policies. Our findings emphasize the necessity of explicitly addressing optimization considerations in the development of OPL algorithms for large action spaces.

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