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Comparing Action-Query Strategies in Semi-Autonomous Agents(Extended Abstract)

机译:半自治代理中的动作查询策略比较(扩展摘要)

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We consider semi-autonomous agents that have uncertain knowledge about their environment, but can ask what action the operator would prefer taking in the current or in a potential future state. Asking queries can help improve behavior, but if queries come at a cost (e.g., due to limited operator attention), the number of queries needs to be minimized. We develop a new algorithm for selecting action queries by adapting the recently proposed Expected Myopic Gain (EMG) from its prior use in settings with reward or transition probability queries to our setting of action queries, and empirically compare it to the current state of the art.
机译:我们考虑半自治的代理人,他们对环境的了解不确定,但是可以询问运营商在当前状态或潜在的未来状态中希望采取什么措施。提出查询可以帮助改善行为,但是如果查询是有代价的(例如,由于操作员的注意力有限),则需要将查询的数量减到最少。我们通过将最近提出的预期近视增益(EMG)从先前在带有奖励或过渡概率查询的设置中的使用适应到我们的动作查询设置,来开发一种用于选择动作查询的新算法,并根据经验将其与当前技术水平进行比较。

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