Efficient inference for mixed Bayesian networks

Kuo-Chu Chang, Z. Tian
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引用次数: 9

Abstract

A Bayesian network is a compact representation for probabilistic models and inference. They have been used successfully for multisensor fusion and situation assessment. It is well known that, in general, the inference algorithms to compute the exact posterior probability of the target state are either computationally infeasible for dense networks or impossible for mixed discrete continuous networks. In those cases, one approach is to compute the approximate results using simulation methods. This paper proposes efficient inference methods for those cases. The goal is not to compute the exact or approximate posterior probability of the target state, but to identify the top (most likely) ones in an efficient manner. The approach is to use intelligent simulation techniques where previous samples will be used to guide the future sampling strategy. By focusing the sampling on the "important" space, we are able to sort out the top candidates quickly. Simulation results are included to demonstrate the performances of the algorithms.
混合贝叶斯网络的高效推理
贝叶斯网络是概率模型和推理的紧凑表示。它们已成功地用于多传感器融合和态势评估。众所周知,一般来说,计算目标状态的精确后验概率的推理算法要么在密集网络中计算不可行,要么在混合离散连续网络中不可能。在这些情况下,一种方法是使用模拟方法计算近似结果。本文针对这些情况提出了有效的推理方法。目标不是计算目标状态的精确或近似后验概率,而是以有效的方式识别最可能的(最可能的)状态。该方法是使用智能模拟技术,其中以前的样本将用于指导未来的采样策略。通过将采样集中在“重要”空间上,我们能够快速地挑选出最佳候选。仿真结果验证了算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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