使用聚类方法识别投票模式

Dharvi Kaur Minhas, Aabha Malik, S. Dubey
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引用次数: 0

摘要

将一个总体或一组数据点分成几个组或簇,以便同一组中的数据点彼此更相似,并且与其他组中的数据点不同,这种行为称为聚类。本研究的目的是对受访者进行分类,以确定对科学技术持类似态度的群体,并分析他们的观点。聚类分析的困难、距离度量的确定、聚类的数量和数据库结构都被认为是聚类分析可能存在的问题。为了探索受访者的分组倾向,使用了几种聚类方法,如K-means,分层聚类等。分层聚类方法本身可以为分析师提供理想的聚类数量;人类的参与是不必要的。树状图提供了有用且易于理解的清晰图像。质心通过k均值聚类方法计算,然后迭代直到找到理想的质心。它假设已经有已知数量的聚类。平面聚类算法是它的另一个名字。由于数据是二元的,可以使用聚类方法对受访者进行分组。聚类方法将通过跟踪所产生的决策应用于调查数据。目前,已经使用了所有的聚类算法,并且发现数据包含三个或四个聚类,每个聚类指定可能感兴趣的投票模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Voting Patterns using Clustering Methodology
The act of separating a population or set of data points into a few groups or clusters so that data points in the same group are more like each other and distinct from data points in other groups is known as clustering. The purpose of this study is to categorize the respondents to identify groups with similar attitudes about science and technology and analyze their views. The difficulties of cluster analysis, determination of distance measure, number of clusters, and database structure have all been noted as possible issues with cluster analysis. To explore the respondents' grouping tendencies, several clustering approaches such as K-means, Hierarchical clustering, and so on are utilised The Hierarchical Clustering methodology itself may provide the analyst with the ideal number of clusters; human participation is not necessary. Dendrograms provide in clear imagery that is useful and simple to comprehend The centroids are computed by the K-means clustering method, which then iterates until it finds the ideal centroid It presumes that there are already known quantities of clusters. The flat clustering algorithm is another name for it. Since the data is binary, the clustering methods may be used to group the respondents. The clustering methods will be applied to the survey data by tracking the resultant decisions. Currently, all clustering algorithms have been used and it has been discovered that the data contains three or four clusters, each of which specifies a voting pattern that may be of interest.
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