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SSPR
2010
Springer

Non-parametric Mixture Models for Clustering

13 years 10 months ago
Non-parametric Mixture Models for Clustering
Mixture models have been widely used for data clustering. However, commonly used mixture models are generally of a parametric form (e.g., mixture of Gaussian distributions or GMM), which significantly limits their capacity in fitting diverse multidimensional data distributions encountered in practice. We propose a non-parametric mixture model (NMM) for data clustering in order to detect clusters generated from arbitrary unknown distributions, using non-parametric kernel density estimates. The proposed model is non-parametric since the generative distribution of each data point depends only on the rest of the data points and the chosen kernel. A leave-one-out likelihood maximization is performed to estimate the parameters of the model. The NMM approach, when applied to cluster high dimensional text datasets significantly outperforms the state-of-the-art and classical approaches such as K-means, Gaussian Mixture Models, spectral clustering and linkage methods.
Pavan Kumar Mallapragada, Rong Jin, Anil K. Jain
Added 30 Jan 2011
Updated 30 Jan 2011
Type Journal
Year 2010
Where SSPR
Authors Pavan Kumar Mallapragada, Rong Jin, Anil K. Jain
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