May 10, 2024
Mohammad Javadian

Mohammad Javadian

Academic rank: Assistant professor
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Education: Ph.D in Electronic Engineering
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Faculty: Faculty of Information Technology

Research

Title
A clustering fuzzification algorithm based on ALM
Type Article
Keywords
Clustering fuzzification Fuzzified clustering algorithms Fuzzy clusters Fuzzified kmeans Fuzzified DBSCAN
Researchers Mohammad Javadian، Ahad Malekzadeh، Gholamali Heydari، Saeed Bagheri Shouraki

Abstract

In this paper, we propose a fuzzification method for clusters produced from a clustering process, based on Active Learning Method (ALM). ALM is a soft computing methodology which is based on a hypothesis claiming that human brain interprets information in pattern-like images. The proposed fuzzification method is applicable to all non-fuzzy clustering algorithms as a post process. The most outstanding advantage of this method is the ability to determine the membership degrees of each data to all clusters based on the density and shape of the clusters. It is worth mentioning that for existing fuzzy clustering algorithms such as FCM the membership degree is usually determined as a function of distance to the center of the clusters. In our proposed method, all data points of a cluster will play a role in order to determine the membership degrees. Consequently, the obtained membership degrees will depend on all of the data points of clusters, the amount of data points, and the density distribution of the clusters. Simulations prove the advantages of the proposed method.