تقرير
Sample Complexity Characterization for Linear Contextual MDPs
العنوان: | Sample Complexity Characterization for Linear Contextual MDPs |
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المؤلفون: | Deng, Junze, Cheng, Yuan, Zou, Shaofeng, Liang, Yingbin |
سنة النشر: | 2024 |
المجموعة: | Computer Science Statistics |
مصطلحات موضوعية: | Computer Science - Machine Learning, Statistics - Machine Learning |
الوصف: | Contextual Markov decision processes (CMDPs) describe a class of reinforcement learning problems in which the transition kernels and reward functions can change over time with different MDPs indexed by a context variable. While CMDPs serve as an important framework to model many real-world applications with time-varying environments, they are largely unexplored from theoretical perspective. In this paper, we study CMDPs under two linear function approximation models: Model I with context-varying representations and common linear weights for all contexts; and Model II with common representations for all contexts and context-varying linear weights. For both models, we propose novel model-based algorithms and show that they enjoy guaranteed $\epsilon$-suboptimality gap with desired polynomial sample complexity. In particular, instantiating our result for the first model to the tabular CMDP improves the existing result by removing the reachability assumption. Our result for the second model is the first-known result for such a type of function approximation models. Comparison between our results for the two models further indicates that having context-varying features leads to much better sample efficiency than having common representations for all contexts under linear CMDPs. Comment: accepted to AIstats2024 |
نوع الوثيقة: | Working Paper |
URL الوصول: | http://arxiv.org/abs/2402.02700 |
رقم الأكسشن: | edsarx.2402.02700 |
قاعدة البيانات: | arXiv |
الوصف غير متاح. |