社会群体识别与聚类

D. Húsek, H. Řezanková, J. Dvorský
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引用次数: 1

摘要

比较了几种适用于社会群体识别的对象群体识别方法。我们假设人们的行为决定了他们的特征,比如代表们的投票习惯。我们对二进制数据分析感兴趣(例如,投票结果是yes或not)。分析了2004年俄罗斯议会唱名表决记录的数据集。采用层次聚类、模糊聚类和布尔因子分析方法。在第一种情况下,我们提出了两步分析,其中第一步获得的因子负荷(作为对象因子分析的结果)由第二步的聚类分析来解释。对于聚类数的确定,采用了传统系数和修正系数。此外,我们建议使用类似hopfield的基于布尔因子分析的神经网络。该方法在代表分组的情况下得到了最好的结果。
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Social Group Identification and Clustering
Some methods for object group identification applicable for social group identification are compared. We suppose that people are characterized by their actions, for example the deputies are characterized by their voting habits. We are interested in binary data analysis (e.g. the result of voting is yes or not). The dataset consisting of the roll-call votes records in the Russian parliament in 2004 was analyzed. Methods of hierarchical and fuzzy clustering, and Boolean factor analysis are applied. In the first case, we propose two-step analysis in which factor loadings (as result of factor analysis of objects) obtained in the first step are interpreted by cluster analysis in the second step. For the cluster number determination both traditional and modified coefficients are used. Further, we suggest using Hopfield-like neural network based Boolean factor analysis for this purpose. This proposed method gives the best results in the case of deputies grouping.
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