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Interactive Bayesian identification of kinematic mechanisms

机译:运动机理的交互式贝叶斯辨识

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This paper addresses the problem of identifying mechanisms based on data gathered while interacting with them. We present a decision-theoretic formulation of this problem, using Bayesian filtering techniques to maintain a distributional estimate of the mechanism type and parameters. In order to reduce the amount of interaction required to arrive at a confident identification, we select actions explicitly to reduce entropy in the current estimate. We demonstrate the approach on a domain with four primitive and two composite mechanisms. The results show that this approach can correctly identify complex mechanisms including mechanisms which are difficult to model analytically. The results also show that entropy-based action selection can significantly decrease the number of actions required to gather the same information.
机译:本文解决了基于与它们交互时收集的数据识别机制的问题。我们提出这个问题的决策理论公式,使用贝叶斯滤波技术来维持机制类型和参数的分布估计。为了减少达到可靠识别所需的交互量,我们明确选择了一些操作来减少当前估计中的熵。我们在具有四个原始机制和两个复合机制的域上演示了该方法。结果表明,该方法可以正确识别复杂的机制,包括难以进行分析建模的机制。结果还表明,基于熵的动作选择可以显着减少收集相同信息所需的动作数量。

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