Online Variational Learning of Dirichlet Process Mixtures of Scaled Dirichlet Distributions

被引:0
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作者
Narges Manouchehri
Hieu Nguyen
Pantea Koochemeshkian
Nizar Bouguila
Wentao Fan
机构
[1] Concordia University,Concordia Institute for Information Systems Engineering
[2] Concordia University,Department of Electrical and Computer Engineering
[3] Huaqiao University,Department of Computer Science and Technology
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关键词
Infinite mixture models; Dirichlet process mixtures of scaled Dirichlet distributions; Online variational learning; Spam categorization; Diabetes; Hepatitis.;
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摘要
Data clustering as an unsupervised method has been one of the main attention-grabbing techniques and a large class of tasks can be formulated by this method. Mixture models as a branch of clustering methods have been used in various fields of research such as computer vision and pattern recognition. To apply these models, we need to address some problems such as finding a proper distribution that properly fits data, defining model complexity and estimating the model parameters. In this paper, we apply scaled Dirichlet distribution to tackle the first challenge and propose a novel online variational method to mitigate the other two issues simultaneously. The effectiveness of the proposed work is evaluated by four challenging real applications, namely, text and image spam categorization, diabetes and hepatitis detection.
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页码:1085 / 1093
页数:8
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