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Multigranulation information fusion: A dempster-shafer evidence theory based clustering ensemble method

机译:多粒度信息融合:基于Dempster-Shafer证据理论的聚类集成方法

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As an important reflection of human cognitive ability, the multi-granulation analysis gets more reasonable solution of a problem in comparison to the single granulation. Clustering analysis is an active area of machine learning and a fundamental technique of information granulation. By using different clustering algorithms and different parameters of an algorithm, a data set can be granulated into multiple granular spaces. Clustering ensemble with these granular spaces is an effective strategy of multigranulation information fusion. The existing algorithms of clustering ensemble can be categorized into three types: feature-based method, combinatorial method and graph-based method. Given the fact that every type of methods has their own advantages and disadvantages, combining their advantages will obtain better granulation results. Based on this consideration, this paper introduces a Dempster-Shafer evidence theory based clustering ensemble method that combines advantages of combinatorial method and graph-based method. In this strategy, the definition of mass functions considers neighbors of an object using the graph binarization and the final clustering ensemble result is generated by applying the Dempster's combination rule. The form of the Dempster's combination rule makes the algorithm conforming to the pattern of combinatorial method. Experimental results show that the proposed method yields better performance in comparison with other seven clustering ensemble methods conducted on fourteen numerical real-world data sets from the UCI Machine Learning Repository.
机译:作为人类认知能力的重要体现,与单颗粒相比,多颗粒分析能够更合理地解决问题。聚类分析是机器学习的活跃领域,也是信息粒化的基本技术。通过使用不同的聚类算法和算法的不同参数,可以将数据集细化为多个粒度空间。用这些粒度空间对集合进行聚类是一种多粒度信息融合的有效策略。现有的聚类集成算法可以分为三类:基于特征的方法,组合方法和基于图的方法。鉴于每种方法都有其优缺点,将它们的优点结合起来将获得更好的造粒效果。基于这种考虑,本文介绍了一种基于Dempster-Shafer证据理论的聚类集成方法,该方法结合了组合方法和基于图的方法的优点。在这种策略中,质量函数的定义使用图二值化来考虑对象的邻居,并且通过应用Dempster的组合规则来生成最终的聚类集成结果。 Dempster组合规则的形式使算法符合组合方法的模式。实验结果表明,与对UCI机器学习存储库中的14个数字真实世界数据集进行的其他7种聚类集成方法相比,该方法具有更好的性能。

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