Learning Generalized Weighted Relevance Aggregation Operators Using Levenberg-Marquardt Method

B. Mendis, Tom Gedeon, L. Kóczy
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引用次数: 17

Abstract

We previously introduced the generalized Weighted Relevance Aggregation Operators (WRAO) for hierarchical fuzzy signatures. WRAO enhances the ability of the fuzzy signature model to adapt to different applications and simplifies the learning of fuzzy signature models from data. In this paper we overcome the practical issues which occur when learning WRAO from data. This paper discuss an algorithm for learning WRAO using the Levenberg- Marquardt (LM) method, which is one of the most sophisticated and widely used gradient based optimization method. Also, this paper shows the successful results of applying the proposed algorithm to extract WRAO for two real world problems namely High Salary Selection and SARS Patient Classification.
基于Levenberg-Marquardt方法的广义加权关联聚合算子学习
我们之前介绍了用于层次模糊签名的广义加权相关聚合算子(WRAO)。WRAO增强了模糊签名模型适应不同应用的能力,简化了模糊签名模型从数据中学习的过程。本文克服了从数据中学习WRAO的实际问题。本文讨论了一种利用Levenberg- Marquardt (LM)方法学习WRAO的算法,LM是目前应用最广泛的基于梯度的优化方法之一。此外,本文还展示了将该算法应用于两个现实世界问题即高薪选择和SARS患者分类的WRAO提取的成功结果。
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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