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Journal ArticleDOI

Fast Reduced Set-Based Exemplar Finding and Cluster Assignment

TLDR
A new fast exemplar-based clustering approach is proposed for a dataset with an arbitrary shape and number of clusters and theoretically analyze the proposed FEF from the perspective of the generalization performance of clustering and demonstrates the power of the proposed approach on several benchmarking datasets.
Abstract
As a fundamental step in various data analysis, exemplar-based clustering aims at clustering data by identifying representative samples as exemplars of the obtained groups. In this paper, a new fast exemplar-based clustering approach is proposed for a dataset with an arbitrary shape and number of clusters. The proposed approach begins with the reduced set of a dataset, which is a condensation of the dataset obtained by the well-developed kernel density estimators reduced set density estimator or fast reduced set density estimator, and then enters into its two advantageous stages: 1) fast exemplar finding (FEF) and 2) fast cluster assignment. The idea of the proposed approach has its basis in three assumptions: 1) exemplars should come from high-density samples; 2) exemplars should be either the components of the reduced set or their neighbors with high similarities; and 3) clusters can be diffused by surrounding both exemplars and its labeled reduced set. We theoretically analyze the proposed FEF from the perspective of the generalization performance of clustering and demonstrate the power of the proposed approach on several benchmarking datasets.

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Citations
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Journal ArticleDOI

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.
Journal ArticleDOI

Deep Subspace Clustering

TL;DR: A deep extension of sparse subspace clustering with L1-norm (DSC-L1), which can infer a new data affinity matrix by simultaneously satisfying the sparsity principle of SSC and the nonlinearity given by neural networks.
Journal ArticleDOI

Fast Exemplar-Based Clustering by Gravity Enrichment Between Data Objects

TL;DR: Based on a new look at the Bayesian framework of data clustering, two new concepts are introduced and they correspond to a Bayesian information transmission system and its transmission learning and an exemplar-based transmission learning machine for clustering is developed.
Journal ArticleDOI

Clustering by transmission learning from data density to label manifold with statistical diffusion

TL;DR: As the first attempt to explain the clustering behavior in a lifelike way, LMTLMC is well justified by revealing the natural parallel between its gradient-based optimization process and the statistical diffusion in statistical physics through the modified Fick’s diffusion law for clustering.
Journal ArticleDOI

A view-reduction based multi-view TSK fuzzy system and its application for textile color classification

TL;DR: Extensive experiments on synthetic datasets, UCI datasets and a case study of textile color classification indicate that the proposed algorithm can effectively reduce weak views and achieves better performance than other benchmarking algorithms.
References
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Proceedings Article

A density-based algorithm for discovering clusters a density-based algorithm for discovering clusters in large spatial databases with noise

TL;DR: In this paper, a density-based notion of clusters is proposed to discover clusters of arbitrary shape, which can be used for class identification in large spatial databases and is shown to be more efficient than the well-known algorithm CLAR-ANS.
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On Estimation of a Probability Density Function and Mode

TL;DR: In this paper, the problem of the estimation of a probability density function and of determining the mode of the probability function is discussed. Only estimates which are consistent and asymptotically normal are constructed.
Journal ArticleDOI

Clustering by Passing Messages Between Data Points

TL;DR: A method called “affinity propagation,” which takes as input measures of similarity between pairs of data points, which found clusters with much lower error than other methods, and it did so in less than one-hundredth the amount of time.
Journal ArticleDOI

OPTICS: ordering points to identify the clustering structure

TL;DR: A new algorithm is introduced for the purpose of cluster analysis which does not produce a clustering of a data set explicitly; but instead creates an augmented ordering of the database representing its density-based clustering structure.
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