Diversity-driven selection of exploration strategies in multi-armed bandits

Fabien C. Y. Benureau, Pierre-Yves Oudeyer
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引用次数: 7

Abstract

We consider a scenario where an agent has multiple available strategies to explore an unknown environment. For each new interaction with the environment, the agent must select which exploration strategy to use. We provide a new strategy-agnostic method that treat the situation as a Multi-Armed Bandits problem where the reward signal is the diversity of effects that each strategy produces. We test the method empirically on a simulated planar robotic arm, and establish that the method is both able discriminate between strategies of dissimilar quality, even when the differences are tenuous, and that the resulting performance is competitive with the best fixed mixture of strategies.
多武装盗匪的多样性驱动勘探策略选择
我们考虑这样一个场景:智能体有多种可用策略来探索未知环境。对于与环境的每次新交互,智能体必须选择使用哪种探索策略。我们提供了一种新的策略不可知论方法,该方法将情况视为多武装强盗问题,其中奖励信号是每种策略产生的效果的多样性。我们在一个模拟的平面机械臂上对该方法进行了实证测试,并证明该方法既能够区分不同质量的策略,即使差异很小,而且最终的性能与最佳固定策略混合具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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