2017 International Artificial Intelligence and Data Processing Symposium, IDAP 2017 --16 September 2017 through 17 September 2017 -- --Unsupervised fuzzy clustering is an important tool for finding the meaningful patterns in data sets. In fuzzy clustering analyses, the performances of clustering algorithms are mostly compared using several internal fuzzy validity indices. However, since the well-known fuzzy indices have originally been proposed for working with membership degrees produced by the traditional Fuzzy c-means Clustering (FCM) algorithm, these indices cannot be used for possibilistic algorithms that produce typicality matrices instead of fuzzy membership matrices. Even more, the variants of FCM and PCM such as Possibilistic Fuzz...
Clustering can be defined as the process of grouping physical or abstract objects into classes of si...
Dear Researcher, Thank you for using this code and datasets. I explain how GPFCM code related to my...
Abstract: Finding the optimal cluster number and validating the partition results of a data set are ...
Abstract. In this paper, we examine the performance of fuzzy clustering algorithms as the major tech...
Fuzzy C-means (FCM) is an important clustering algorithm with broad applications such as retail mark...
This paper proposes a novel valid-ity index for fuzzy-possibilistic c-means(FPCM) algorithm, it com-...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
The so-called fuzzy-possibilistic c-means (FPCM) algorithm was introduced as an early mixed-partitio...
Since clustering is an unsupervised method and there is no a-priori indication for the actual number...
Two well-known drawbacks in fuzzy clustering are the requirement of assigning in advance the number...
Previously, eight popular information-theoretic based cluster validity indices have been generalized...
A parameter specifying the number of clusters in an unsupervised clustering algorithm is often unkno...
Fuzzy clustering is useful to mine complex and multi-dimensional datasets, where the members have pa...
In the fuzzy clustering literature, two main types of membership are usually considered: A relative ...
Cluster validation is a major issue in cluster analysis. Many existing validity indices do not perfo...
Clustering can be defined as the process of grouping physical or abstract objects into classes of si...
Dear Researcher, Thank you for using this code and datasets. I explain how GPFCM code related to my...
Abstract: Finding the optimal cluster number and validating the partition results of a data set are ...
Abstract. In this paper, we examine the performance of fuzzy clustering algorithms as the major tech...
Fuzzy C-means (FCM) is an important clustering algorithm with broad applications such as retail mark...
This paper proposes a novel valid-ity index for fuzzy-possibilistic c-means(FPCM) algorithm, it com-...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
The so-called fuzzy-possibilistic c-means (FPCM) algorithm was introduced as an early mixed-partitio...
Since clustering is an unsupervised method and there is no a-priori indication for the actual number...
Two well-known drawbacks in fuzzy clustering are the requirement of assigning in advance the number...
Previously, eight popular information-theoretic based cluster validity indices have been generalized...
A parameter specifying the number of clusters in an unsupervised clustering algorithm is often unkno...
Fuzzy clustering is useful to mine complex and multi-dimensional datasets, where the members have pa...
In the fuzzy clustering literature, two main types of membership are usually considered: A relative ...
Cluster validation is a major issue in cluster analysis. Many existing validity indices do not perfo...
Clustering can be defined as the process of grouping physical or abstract objects into classes of si...
Dear Researcher, Thank you for using this code and datasets. I explain how GPFCM code related to my...
Abstract: Finding the optimal cluster number and validating the partition results of a data set are ...