基于不完全数据的案例推理中加入Choquet积分

Shihong Yue, Weiqing Li, Jing Zhao, Xian Zhao
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引用次数: 1

摘要

Choquet积分是一种非常有用的多资源信息融合工具。基于“相似的问题有相似的解决方案”的基本思想,基于案例的推理(CBR)可以作为信息融合工具。但是,在过去的几十年里,对不同案例的相似性度量的研究几乎没有令人满意的结果。本文采用任意数目的相似情形距离作为Choquet积分的输入,以灵活地表示情形之间的相互作用。因此,我们提出的方法具有近似CBR系统描述的更一般关系的能力。由于Choquet积分的应用以及现有的CBR系统可以看作是我们所提出方法的一个特例,我们在很大程度上推广了传统CBR技术的应用范围。从本质上讲,我们提出的方法可以很好地基于不完整的数据,也可以容忍噪声数据和异常值。
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Adding Choquet integral to case-based reasoning with incomplete data
The Choquet integral is a very useful tool for multiple resource information fusion. Also, the case-based reasoning (CBR) can serve as the information fusion tool based on the basic idea “similar problems have similar solutions”. But the similarity measure among diverse cases has been studied with little satisfaction in the past decades. In this paper we take arbitrary number of similar case distances as the input of the Choquet integral to flexibly represent the interaction among the cases. Consequently, our proposed approach has the ability to approximate the more general relation described by a CBR system. Because of the application of the Choquet integral and the fact that the existing CBR system can be regarded as a special case of our proposed approach, we largely generalize the application scope of traditional CBR techniques. Essentially, our proposed approach can work well based on incomplete data and also tolerate noisy data and outliers.
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