Model Selection for Off-policy Evaluation: New Algorithms and Experimental Protocol
Abstract
Holdout validation and hyperparameter tuning from data is a long-standing problem in offline reinforcement learning (RL). A standard framework is to use off-policy evaluation (OPE) methods to evaluate and select the policies, but OPE either incurs exponential variance (e.g., importance sampling) or has hyperparameters on their own (e.g., FQE and model-based). We focus on hyperparameter tuning for OPE itself, which is even more under-investigated. Concretely, we select among candidate value functions ("model-free") or dynamics ("model-based") to best assess the performance of a target policy. Concretely, we select among candidate value functions (``model-free'') or dynamics models (``model-based'') to best assess the performance of a target policy. We develop: (1) new model-free and model-based selectors with theoretical guarantees, and (2) a new experimental protocol for empirically evaluating them. Compared to the model-free protocol in prior works, our new protocol allows for more stable generation and better control of candidate value functions in an optimization-free manner, and evaluation of model-free and model-based methods alike. We exemplify the protocol on Gym-Hopper, and find that our new model-free selector, LSTD-Tournament, demonstrates promising empirical performance.
Cite
@article{arxiv.2502.08021,
title = {Model Selection for Off-policy Evaluation: New Algorithms and Experimental Protocol},
author = {Pai Liu and Lingfeng Zhao and Shivangi Agarwal and Jinghan Liu and Audrey Huang and Philip Amortila and Nan Jiang},
journal= {arXiv preprint arXiv:2502.08021},
year = {2025}
}