邓普斯特-谢弗概率模型中基于观察的信念形成与虚拟信念空间的信念整合

T. Matsuyama
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引用次数: 18

摘要

集成多源不确定信息是实现可靠人工智能系统的关键技术。Dempster-Shafer概率模型(DS模型)为积分提供了一种有用的计算方案。本文提出了两种基于DS模型的信念形成和积分算法。第一种算法是基于观测数据和对象类别之间的相似性度量来计算基本概率分配函数。通过若干模糊测度之间的数学关系,说明了该算法的合理性。然后,作者提出了一种新的多信念(即基本概率赋值函数)的积分算法。该算法解决了DS模型中存在争议的部分冲突信念组合问题。也就是说,使用本文提出的算法,即使多个信念部分或完全冲突,作者也可以平滑地整合多个信念。此外,从计算的角度来看,该算法可以非常有效地实现信念积分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Belief formation from observation and belief integration using virtual belief space in Dempster-Shafer probability model
Integrating uncertain information from multiple sources is a key technology to realise reliable AI systems. The Dempster-Shafer probability model (DS model) provides a useful computational scheme for the integration. In this paper, the author proposes two algorithms for belief formation and integration based on the DS model. The first algorithm is for computing a basic probability assignment function based on similarity measures between observed data and object categories. The soundness of the algorithm is shown using mathematical relations between several fuzzy measures. Then, the author proposes a new algorithm for integrating multiple beliefs (i.e, basic probability assignment functions). Using this algorithm, the author can solve a controversial problem in the DS model about how to combine partially conflicting beliefs. That is, with the proposed algorithm, the author can smoothly integrate multiple beliefs even if they are partially/totally conflicting. From a computational viewpoint, moreover, the belief integration by the proposed algorithm can be implemented very efficiently.<>
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