We study how to derive a fuzzy rule-based classification model using the theoretical framework of belief functions. For this purpose we use the recently proposed Evidential c-means (ECM) to derive Takagi-Sugeno (TS) models solely from data. ECM allocates, for each object, a mass of belief to any subsets of possible clusters, which allows to gain a deeper insight in the data while being robust with respect to outliers. Some classification examples are discussed, which show the advantages and disadvantages of the proposed algorithm
International audienceMedian clustering is of great value for partitioning relational data. In this ...
International audienceIn some real clustering tasks, the data may be sparse and uncertain. Although ...
International audienceIn this paper, a dynamic evidential clustering algorithm (DEC) is introduced t...
We study how to derive a fuzzy rule-based classification model using the theoretical framework of be...
Abstract. We study how to derive a fuzzy rule-based classification model using the theoretical frame...
International audienceThe well-known Fuzzy C-Means (FCM) algorithm for data clustering has been exte...
Abstract. We study a new approach to regression analysis. We propose a new rule-based regression mod...
International audienceThe Gaussian mixture model (GMM) provides a simple yet principled framework fo...
International audienceClustering is an essential part of data mining, which can be used to organize ...
The Gaussian mixture model (GMM) provides a convenient yet principled framework for clustering, with...
Clustering is widely used in text analysis, natural language processing, image segmentation, and oth...
International audienceIn real clustering applications, proximity data, in which only pairwise simila...
International audienceMedian clustering is of great value for partitioning relational data. In this ...
International audienceIn some real clustering tasks, the data may be sparse and uncertain. Although ...
International audienceIn this paper, a dynamic evidential clustering algorithm (DEC) is introduced t...
We study how to derive a fuzzy rule-based classification model using the theoretical framework of be...
Abstract. We study how to derive a fuzzy rule-based classification model using the theoretical frame...
International audienceThe well-known Fuzzy C-Means (FCM) algorithm for data clustering has been exte...
Abstract. We study a new approach to regression analysis. We propose a new rule-based regression mod...
International audienceThe Gaussian mixture model (GMM) provides a simple yet principled framework fo...
International audienceClustering is an essential part of data mining, which can be used to organize ...
The Gaussian mixture model (GMM) provides a convenient yet principled framework for clustering, with...
Clustering is widely used in text analysis, natural language processing, image segmentation, and oth...
International audienceIn real clustering applications, proximity data, in which only pairwise simila...
International audienceMedian clustering is of great value for partitioning relational data. In this ...
International audienceIn some real clustering tasks, the data may be sparse and uncertain. Although ...
International audienceIn this paper, a dynamic evidential clustering algorithm (DEC) is introduced t...