序列目标营销中各种强化学习策略的实证比较

N. Abe, E. Pednault, Haixun Wang, B. Zadrozny, W. Fan, C. Apté
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引用次数: 22

摘要

我们实证评估了各种强化学习方法在顺序目标营销中的应用。特别是,我们提出并评估了一系列强化学习方法,从“直接”或“批处理”方法到“间接”或“基于模拟”的方法,以及介于两者之间的我们称之为“半直接”的方法。我们进行了一些对照实验来评估这些竞争方法的性能。我们的研究结果表明,虽然间接方法可以在接近完美建模的情况下表现得更好,但在系统建模参数受到限制的更现实的情况下,间接方法的性能往往会下降。我们还表明,半直接方法在减少达到给定性能水平所需的计算量方面是有效的,并且通常会产生更有利可图的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical comparison of various reinforcement learning strategies for sequential targeted marketing
We empirically evaluate the performance of various reinforcement learning methods in applications to sequential targeted marketing. In particular we propose and evaluate a progression of reinforcement learning methods, ranging from the "direct" or "batch" methods to "indirect" or "simulation based" methods, and those that we call "semidirect" methods that fall between them. We conduct a number of controlled experiments to evaluate the performance of these competing methods. Our results indicate that while the indirect methods can perform better in a situation in which nearly perfect modeling is possible, under the more realistic situations in which the system's modeling parameters have restricted attention, the indirect methods' performance tend to degrade. We also show that semi-direct methods are effective in reducing the amount of computation necessary to attain a given level of performance, and often result in more profitable policies.
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