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Adaptive fuzzy consensus clustering framework for clustering analysis of cancer data

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TLDR
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.
Abstract
Performing clustering analysis is one of the important research topics in cancer discovery using gene expression profiles, which is crucial in facilitating the successful diagnosis and treatment of cancer. While there are quite a number of research works which perform tumor clustering, few of them considers how to incorporate fuzzy theory together with an optimization process into a consensus clustering framework to improve the performance of clustering analysis. In this paper, we first propose a random double clustering based cluster ensemble framework (RDCCE) to perform tumor clustering based on gene expression data. Specifically, RDCCE generates a set of representative features using a randomly selected clustering algorithm in the ensemble, and then assigns samples to their corresponding clusters based on the grouping results. In addition, we also introduce the random double clustering based fuzzy cluster ensemble framework (RDCFCE), which is designed to improve the performance of RDCCE by integrating the newly proposed fuzzy extension model into the ensemble framework. RDCFCE adopts the normalized cut algorithm as the consensus function to summarize the fuzzy matrices generated by the fuzzy extension models, partition the consensus matrix, and obtain the final result. Finally, adaptive RDCFCE (A-RDCFCE) is proposed to optimize RDCFCE and improve the performance of RDCFCE further by adopting a self-evolutionary process (SEPP) for the parameter set. Experiments on real cancer gene expression profiles indicate that RDCFCE and A-RDCFCE works well on these data sets, and outperform most of the state-of-the-art tumor clustering algorithms.

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A survey on ensemble learning

TL;DR: Challenges and possible research directions for each mainstream approach of ensemble learning are presented and an extra introduction is given for the combination of ensemblelearning with other machine learning hot spots such as deep learning, reinforcement learning, etc.
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Incremental Semi-Supervised Clustering Ensemble for High Dimensional Data Clustering

TL;DR: An incremental semi-supervised clustering ensemble framework (ISSCE) which makes use of the advantage of the random subspace technique, the constraint propagation approach, the proposed incremental ensemble member selection process, and the normalized cut algorithm to perform high dimensional data clustering is proposed.
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Cluster ensembles: A survey of approaches with recent extensions and applications

TL;DR: The survey attempts to match this emerging attention with the provision of fundamental basis and theoretical details of state-of-the-art methods found in the present literature, which yields the ranges of ensemble generation strategies, summarization and representation of ensemble members, as well as the topic of consensus clustering.
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Enhanced Ensemble Clustering via Fast Propagation of Cluster-Wise Similarities

TL;DR: A novel ensemble clustering approach based on fast propagation of cluster-wise similarities via random walks based on an enhanced co-association matrix, which is able to simultaneously capture the object-wise co-occurrence relationship as well as the multiscale clusters-wise relationship in ensembles.
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A survey of neural network-based cancer prediction models from microarray data.

TL;DR: Results indicate that the functionality of the neural network determines its general architecture, however, the decision on the number of hidden layers, neurons, hypermeters and learning algorithm is made using trail-and-error techniques.
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TL;DR: In this paper, the problem of selecting one of a number of models of different dimensions is treated by finding its Bayes solution, and evaluating the leading terms of its asymptotic expansion.
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