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A Robust Approach for Multivariate Binary Vectors Clustering and Feature Selection

机译:多变量二进制向量聚类和特征选择的强大方法

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Given a set of binary vectors drawn from a finite multiple Bernoulli mixture model, an important problem is to determine which vectors are outliers and which features are relevant. The goal of this paper is to propose a model for binary vectors clustering that accommodates outliers and allows simultaneously the incorporation of a feature selection methodology into the clustering process. We derive an EM algorithm to fit the proposed model. Through simulation studies and a set of experiments involving handwritten digit recognition and visual scenes categorization, we demonstrate the usefulness and effectiveness of our method.
机译:给定一组二进制向量从有限的多个Bernoulli混合模型中汲取的二进制矢量,重要问题是确定哪些载体是异常值,并且哪些功能是相关的。本文的目标是提出用于群集的二进制向量群集,该模型容纳异常值并同时将特征选择方法同时纳入聚类过程。我们推出了EM算法以适应所提出的模型。通过仿真研究和一组涉及手写数字识别和视觉场景分类的实验,我们证明了我们方法的有用性和有效性。

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