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Active sensing for continuous state and action spaces via task-action entropy minimization

机译:通过任务-动作熵最小化主动感知连续状态和动作空间

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摘要

In this paper, a new task-oriented active-sensing method is presented. Most active sensing methods choose sensing actions that minimize the uncertainty of the state according to some information-theoretic measure. While this is reasonable for most applications, minimizing state uncertainty may not be most relevant when the state information is used to perform a task. This is because the uncertainty in some subspace of the state space could have more impact on the performance of the task than the others at a given time. The active-sensing method presented in this paper takes the task into account when selecting sensing actions by minimizing the uncertainty in future task action.
机译:本文提出了一种新的面向任务的主动传感方法。大多数主动感应方法会根据某些信息理论量度来选择使状态不确定性最小化的感应动作。尽管这对于大多数应用程序来说是合理的,但是当使用状态信息执行任务时,使状态不确定性最小化可能并不是最重要的。这是因为在给定时间,状态空间某些子空间中的不确定性可能对任务性能的影响要大于其他不确定性。本文提出的主动感测方法在选择感测动作时通过将未来任务动作的不确定性最小化来考虑任务。

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