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Unsupervised learning of mixture models based on swarm intelligence and neural networks with optimal completion using incomplete data

机译:基于群体智能和神经网络的混合模型的无监督学习,使用不完整数据进行最佳完成

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In this paper, a new algorithm is presented for unsupervised learning of finite mixture models (FMMs) using data set with missing values. This algorithm overcomes the local optima problem of the Expectation-Maximization (EM) algorithm via integrating the EM algorithm with Particle Swarm Optimization (PSO). In addition, the proposed algorithm overcomes the problem of biased estimation due to overlapping clusters in estimating missing values in the input data set by integrating locally-tuned general regression neural networks with Optimal Completion Strategy (OCS). A comparison study shows the superiority of the proposed algorithm over other algorithms commonly used in the literature in unsupervised learning of FMM parameters that result in minimum mis-classification errors when used in clustering incomplete data set that is generated from overlapping clusters and these clusters are largely different in their sizes.
机译:在本文中,提出了一种新算法,用于使用缺少值的数据集进行无监督学习的有限混合模型(FMM)。通过将EM算法与粒子群优化(PSO)集成,该算法克服了期望最大化(EM)算法的局部最优问题。此外,该算法通过将局部优化的通用回归神经网络与最佳完成策略(OCS)集成在一起,克服了在估计输入数据集中的缺失值时由于簇重叠造成的偏差估计问题。一项比较研究表明,在无监督学习FMM参数的过程中,所提出的算法优于文献中常用的其他算法,当对由重叠群集生成的不完整数据集进行群集时,这些错误分类错误的发生率最小,并且这些群集在很大程度上大小各异。

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