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Main Authors: Dong, Guanfang, Tan, Zijie, Zhao, Chenqiu, Basu, Anup
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.03407
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author Dong, Guanfang
Tan, Zijie
Zhao, Chenqiu
Basu, Anup
author_facet Dong, Guanfang
Tan, Zijie
Zhao, Chenqiu
Basu, Anup
contents Distribution learning finds probability density functions from a set of data samples, whereas clustering aims to group similar data points to form clusters. Although there are deep clustering methods that employ distribution learning methods, past work still lacks theoretical analysis regarding the relationship between clustering and distribution learning. Thus, in this work, we provide a theoretical analysis to guide the optimization of clustering via distribution learning. To achieve better results, we embed deep clustering guided by a theoretical analysis. Furthermore, the distribution learning method cannot always be directly applied to data. To overcome this issue, we introduce a clustering-oriented distribution learning method called Monte-Carlo Marginalization for Clustering. We integrate Monte-Carlo Marginalization for Clustering into Deep Clustering, resulting in Deep Clustering via Distribution Learning (DCDL). Eventually, the proposed DCDL achieves promising results compared to state-of-the-art methods on popular datasets. Considering a clustering task, the new distribution learning method outperforms previous methods as well.
format Preprint
id arxiv_https___arxiv_org_abs_2408_03407
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Deep Clustering via Distribution Learning
Dong, Guanfang
Tan, Zijie
Zhao, Chenqiu
Basu, Anup
Machine Learning
Distribution learning finds probability density functions from a set of data samples, whereas clustering aims to group similar data points to form clusters. Although there are deep clustering methods that employ distribution learning methods, past work still lacks theoretical analysis regarding the relationship between clustering and distribution learning. Thus, in this work, we provide a theoretical analysis to guide the optimization of clustering via distribution learning. To achieve better results, we embed deep clustering guided by a theoretical analysis. Furthermore, the distribution learning method cannot always be directly applied to data. To overcome this issue, we introduce a clustering-oriented distribution learning method called Monte-Carlo Marginalization for Clustering. We integrate Monte-Carlo Marginalization for Clustering into Deep Clustering, resulting in Deep Clustering via Distribution Learning (DCDL). Eventually, the proposed DCDL achieves promising results compared to state-of-the-art methods on popular datasets. Considering a clustering task, the new distribution learning method outperforms previous methods as well.
title Deep Clustering via Distribution Learning
topic Machine Learning
url https://arxiv.org/abs/2408.03407