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      Enhanced Fuzzy Clustering for Incomplete Instance with Evidence Combination

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          Abstract

          Clustering incomplete instance is still a challenging task since missing values maybe make the cluster information ambiguous, leading to the uncertainty and imprecision in results. This article investigates an enhanced fuzzy clustering with evidence combination method based on Dempster-Shafer theory (DST) to address this problem. First, the dataset is divided into several subsets, and missing values are imputed by neighbors with different weights in each subset. It aims to model missing values locally to reduce the negative impact of the bad estimations. Second, an objective function of enhanced fuzzy clustering is designed and then optimized until the best membership and reliability matrices are found. Each subset has a membership matrix that contains all sub-instances’ membership to different clusters. The fuzzy reliability matrix is employed to characterize the reliability of each subset on different clusters. Third, an adaptive evidence combination rule based on the DST is developed to combine the discounted subresults (memberships) with different reliability to make the final decision for each instance. The proposed method can characterize uncertainty and imprecision by assigning instances to specific clusters or meta-clusters composed of several specific clusters. Once an instance is assigned to a meta-cluster, the cluster information of this instance is (locally) imprecise. The effectiveness of proposed method is demonstrated on several real-world datasets by comparing with existing techniques.

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          Objective Criteria for the Evaluation of Clustering Methods

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            Missing value estimation methods for DNA microarrays

            Gene expression microarray experiments can generate data sets with multiple missing expression values. Unfortunately, many algorithms for gene expression analysis require a complete matrix of gene array values as input. For example, methods such as hierarchical clustering and K-means clustering are not robust to missing data, and may lose effectiveness even with a few missing values. Methods for imputing missing data are needed, therefore, to minimize the effect of incomplete data sets on analyses, and to increase the range of data sets to which these algorithms can be applied. In this report, we investigate automated methods for estimating missing data.
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              Flexible Imputation of Missing Data, Second Edition

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                Author and article information

                Contributors
                Journal
                ACM Transactions on Knowledge Discovery from Data
                ACM Trans. Knowl. Discov. Data
                Association for Computing Machinery (ACM)
                1556-4681
                1556-472X
                April 30 2024
                January 12 2024
                April 30 2024
                : 18
                : 3
                : 1-20
                Affiliations
                [1 ]Universiti Sains Malaysia, Malaysia
                Article
                10.1145/3638061
                6fa5622b-1950-47c9-ab7a-bd70b67b2ecb
                © 2024
                History

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