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Comparing Action-Query Strategies in Semi-Autonomous Agents

机译:半自治代理中的动作查询策略比较

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We consider settings in which a semi-autonomous agent has uncertain knowledge about its environment, but can ask what action the human operator would prefer taking in the current or in a potential future state. Asking queries can improve behavior, but if queries come at a cost (e.g., due to limited operator attention), the value of each query should be maximized. We compare two strategies for selecting action queries: 1) based on myopically maximizing expected gain in long-term value, and 2) based on myopically minimizing uncertainty in the agent's policy representation. We show empirically that the first strategy tends to select more valuable queries, and that a hybrid method can outperform either method alone in settings with limited computation.
机译:我们考虑的环境中,半自治主体对环境的了解不确定,但是可以询问操作员希望在当前或潜在的未来状态下采取何种措施。提出查询可以改善行为,但是如果查询是有代价的(例如,由于操作员的注意力有限),则每个查询的价值都应最大化。我们比较了两种选择操作查询的策略:1)基于近视最大化长期价值的预期收益,以及2)基于近视最小化代理策略表示中的不确定性。我们凭经验表明,第一种策略倾向于选择更有价值的查询,并且在计算量有限的情况下,混合方法可以胜过任何一种方法。

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