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Journal ArticleDOI

Rough-Fuzzy Clustering for Grouping Functionally Similar Genes from Microarray Data

Pradipta Maji, +1 more
- 01 Mar 2013 - 
- Vol. 10, Iss: 2, pp 286-299
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TLDR
An efficient method is proposed to select initial prototypes of different gene clusters, which enables the proposed c-means algorithm to converge to an optimum or near optimum solutions and helps to discover coexpressed gene clusters.
Abstract
Gene expression data clustering is one of the important tasks of functional genomics as it provides a powerful tool for studying functional relationships of genes in a biological process. Identifying coexpressed groups of genes represents the basic challenge in gene clustering problem. In this regard, a gene clustering algorithm, termed as robust rough-fuzzy $(c)$-means, is proposed judiciously integrating the merits of rough sets and fuzzy sets. While the concept of lower and upper approximations of rough sets deals with uncertainty, vagueness, and incompleteness in cluster definition, the integration of probabilistic and possibilistic memberships of fuzzy sets enables efficient handling of overlapping partitions in noisy environment. The concept of possibilistic lower bound and probabilistic boundary of a cluster, introduced in robust rough-fuzzy $(c)$-means, enables efficient selection of gene clusters. An efficient method is proposed to select initial prototypes of different gene clusters, which enables the proposed $(c)$-means algorithm to converge to an optimum or near optimum solutions and helps to discover coexpressed gene clusters. The effectiveness of the algorithm, along with a comparison with other algorithms, is demonstrated both qualitatively and quantitatively on 14 yeast microarray data sets.

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Citations
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Journal ArticleDOI

Multigranulation rough-fuzzy clustering based on shadowed sets

TL;DR: By integrating the notions of shadowed sets and multigranulation into rough-fuzzy clustering approaches, the overall topology of data can be captured well and the uncertain information implicated inData can be effectively addressed, including the uncertainty generated by fuzzification coefficient.
Journal ArticleDOI

Gene selection for tumor classification using neighborhood rough sets and entropy measures

TL;DR: A novel gene selection method based on the neighborhood rough set model is proposed, which has the ability of dealing with real-value data whilst maintaining the original gene classification information, and an entropy measure is addressed under the frame of neighborhood rough sets for tackling the uncertainty and noisy of gene expression data.
Journal ArticleDOI

Adaptive fuzzy consensus clustering framework for clustering analysis of cancer data

TL;DR: Experiments on real cancer gene expression profiles indicate that R DCFCE and A-RDCFCE works well on these data sets, and outperform most of the state-of-the-art tumor clustering algorithms.
Journal ArticleDOI

Detecting Overlapping Protein Complexes by Rough-Fuzzy Clustering in Protein-Protein Interaction Networks

TL;DR: A novel rough-fuzzy clustering method to detect overlapping protein complexes in protein-protein interaction (PPI) networks and provides a new insight of network division, and it can also be applied to identify overlapping community structure in social networks and LFR benchmark networks.
Journal ArticleDOI

Cross-domain, soft-partition clustering with diversity measure and knowledge reference

TL;DR: The quadratic weights and Gini-Simpson diversity based fuzzy clustering model (QWGSD-FC), is first proposed as a basis of this work and two types of cross-domain, soft-partition clustering frameworks and their corresponding algorithms, referred to as type-I/type-II knowledge-transfer-oriented c-means (TI-KT-CM and TII-KT
References
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Journal ArticleDOI

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Proceedings Article

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Journal ArticleDOI

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