2021
DOI: 10.21203/rs.3.rs-429631/v1
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Fuzzy Clustering Optimal k Selection Method Based on Multi-objective Optimization

Abstract: Because of the complexity of data sets from the real world, it is difficult to classify the data sets clearly and effectively, thus we prefer to adopt fuzzy clustering approaches to analyze the data sets. However, due to the variety of fuzzy clustering algorithms, and the different number of clusters will lead to different clustering results. The number of clusters is closely related to the clustering division, so how to determine the number of fuzzy clustering (k ) has become a problem. Until now, many resear… Show more

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