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Clustering performance comparison using K-means and expectation maximization algorithms

机译:使用K均值和期望最大化算法的聚类性能比较

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摘要

Clustering is an important means of data mining based on separating data categories by similar features. Unlike the classification algorithm, clustering belongs to the unsupervised type of algorithms. Two representatives of the clustering algorithms are the K-means and the expectation maximization (EM) algorithm. Linear regression analysis was extended to the category-type dependent variable, while logistic regression was achieved using a linear combination of independent variables. To predict the possibility of occurrence of an event, a statistical approach is used. However, the classification of all data by means of logistic regression analysis cannot guarantee the accuracy of the results. In this paper, the logistic regression analysis is applied to EM clusters and the K-means clustering method for quality assessment of red wine, and a method is proposed for ensuring the accuracy of the classification results.
机译:聚类是基于相似特征将数据类别分开的重要数据挖掘手段。与分类算法不同,聚类属于算法的非监督类型。聚类算法的两个代表是K均值和期望最大化(EM)算法。线性回归分析扩展到类别类型的因变量,而逻辑回归使用自变量的线性组合实现。为了预测事件发生的可能性,使用了统计方法。但是,通过逻辑回归分析对所有数据进行分类不能保证结果的准确性。本文将逻辑回归分析应用于EM聚类和K-means聚类方法对红酒的质量评估,并提出了一种确保分类结果准确性的方法。

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