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An improved possibilistic C-Means algorithm with finite rejection and robust scale estimation

机译:具有有限抑制和鲁棒量表估计的改进的可能性C型算法

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We propose an improved Possibilistic C-Means (PCM) algorithm called the New Possibilistic C-Means algorithm (NPCM). The NPCM solves the problems associated with the traditional PCM, namely the extreme dependence on a good initialization and an accurate estimate of scale. The connection between the PCM and M-, and W-estimators is exploited to robustify the PCM memberships by forcing finite rejection of the outliers and by integrating a dynamic and robust scale estimation scheme in the alternative optimization process of the PCM objective function. We further extend the algorithm to the case of multivariate Gaussian clusters where we propose a new 50% breakdown scheme to estimate the covariance matrices. The initialization scheme is also refined to yield better prototype estimates. The resulting algorithm is proved to be superior in performance to the hard, fuzzy, and original possibilistic clustering algorithms.
机译:我们提出了一种改进的可能性C-Means(PCM)算法,称为新的可能性C-Means算法(NPCM)。 NPCM解决了与传统PCM相关的问题,即对良好初始化的极端依赖和准确的规模估计。 PCM和M-和W估计之间的连接被利用通过强制对异常值的有限拒绝来强制PCM成员资格,并通过在PCM目标函数的替代优化过程中集成动态和鲁棒垢估计方案。我们进一步将算法扩展到多元高斯集群的情况,其中我们提出了一个新的50%的崩溃方案来估计协方差矩阵。还改进了初始化方案以产生更好的原型估计。被证明的算法被证明是对硬,模糊和原始可能性聚类算法的性能优异。

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