多尺度专家问题的层次学习算法

L. Yang, Y. Chen, M. Hajiesmaili, M. Herbster, D. Towsley
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引用次数: 1

摘要

本文研究了不同专家的奖励在不同的奖励范围内变化的多尺度专家问题。现有的多尺度专家问题算法的性能与专家的最大奖励范围或最佳专家的最大奖励范围成线性比例下降,并且没有捕捉到专家之间奖励范围的非均匀异质性。在这项工作中,我们提出了基于专家奖励范围的异质性构建分层树结构的学习算法,然后根据奖励上限和随时间累积的经验反馈确定差异化学习率。然后,我们将提出的算法的遗憾描述为非均匀奖励范围的函数,并表明当专家的奖励在不同范围内表现出非均匀异质性时,他们的遗憾优于先前的算法。最后,通过数值实验验证了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Learning Algorithms for Multi-scale Expert Problems
In this paper, we study the multi-scale expert problem, where the rewards of different experts vary in different reward ranges. The performance of existing algorithms for the multi-scale expert problem degrades linearly proportional to the maximum reward range of any expert or the best expert and does not capture the non-uniform heterogeneity in the reward ranges among experts. In this work, we propose learning algorithms that construct a hierarchical tree structure based on the heterogeneity of the reward range of experts and then determine differentiated learning rates based on the reward upper bounds and cumulative empirical feedback over time. We then characterize the regret of the proposed algorithms as a function of non-uniform reward ranges and show that their regrets outperform prior algorithms when the rewards of experts exhibit non-uniform heterogeneity in different ranges. Last, our numerical experiments verify our algorithms' efficiency compared to previous algorithms.
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