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State-Space Abstraction for Anytime Evaluation of Probabilistic Networks

机译:随时评估概率网络的状态空间抽象

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One important factor determining the computational complexity of evaluating a probabilistic network is the cardinality of the state spaces of the nodes. By varying the granularity of the state spaces, one can trade off accuracy in the result for computational efficiency. We present an anytime procedure for approximate evaluation of probabilistic networks based on this idea. On application to some simple networks, the procedure exhibits a smooth improvement in approxi -mation quality as computation time increases. This suggests that state-space abstraction is one more useful control parameter for designing realtime probabilistic reasoners.
机译:决定评估概率网络的计算复杂度的一个重要因素是节点状态空间的基数。通过改变状态空间的粒度,可以权衡结果的准确性以提高计算效率。我们提出了一个随时随地的程序,基于此思想对概率网络进行近似评估。在应用于一些简单的网络时,随着计算时间的增加,该过程在近似质量上显示出平滑的改进。这表明状态空间抽象是用于设计实时概率推理器的另一个有用的控制参数。

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