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Temporal relevance in dynamic decision networks with sparse evidence

机译:具有稀疏证据的动态决策网络中的时间相关性

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摘要

Dynamic decision networks have been used in many applications and they are particularly suited for monitoring applications. However, the networks tend to grow very large resulting in significant performance degradation. In this paper, we study the degeneration of relevance of uncertain temporal information and propose an analytical upper bound for the relevance time of information in a restricted class of dynamic decision networks with sparse evidence. An empirical generalization of this analytical result is presented along with a series of experimental results to verify the performance of the empirical upper bound. By discarding irrelevant and weakly relevant evidence, the performance of the network is significantly improved.
机译:动态决策网络已在许多应用程序中使用,它们特别适合于监视应用程序。但是,网络往往会变得非常大,从而导致性能显着下降。在本文中,我们研究了不确定时间信息的相关性的退化,并提出了在稀疏证据的受限动态决策网络中信息相关时间的解析上限。给出了此分析结果的经验概括以及一系列实验结果,以验证经验上限的性能。通过丢弃无关紧要的证据,可以显着提高网络的性能。

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