Ccegan: A Robust Ensemble Framework for Gan-Based Clustering

30 Pages Posted: 10 Jan 2024

See all articles by Jie Yan

Jie Yan

Central University of Finance and Economics

Jing Liu

Central University of Finance and Economics

Yun Chen

Central University of Finance and Economics

Tao You

affiliation not provided to SSRN

Xiaoke Ma

Xidian University - School of Computer Science and Technology

Zhong-Yuan Zhang

Central University of Finance and Economics

Abstract

Clustering algorithms play a crucial role in various domains, and recent advancements in Generative Adversarial Network (GAN) techniques have opened new possibilities for improving clustering effectiveness. This paper aims to enhance the performance of GAN clustering by addressing the challenge of generating high-quality labeled samples. We propose a novel contrastive network and a voting-based method to progressively filter and fuse information from synthetic samples. These methods are incorporated into a deep clustering ensemble framework, which combines the advantages of GAN clustering and ensemble learning. Through comprehensive empirical analysis on diverse datasets, including both image and non-image datasets, we demonstrate the superiority of our proposed method in terms of effectiveness and robustness. Our approach outperforms existing GAN clustering methods while maintaining a reasonable computational time. This work contributes to the field of clustering algorithms by providing a more effective and robust approach for leveraging GANs in the clustering process.

Keywords: Generative Adversarial Network (GAN), clustering, ensemble learning, contrastive network, filtering methods, deep clustering.

Suggested Citation

Yan, Jie and Liu, Jing and Chen, Yun and You, Tao and Ma, Xiaoke and Zhang, Zhong-Yuan, Ccegan: A Robust Ensemble Framework for Gan-Based Clustering. Available at SSRN: https://ssrn.com/abstract=4690811 or http://dx.doi.org/10.2139/ssrn.4690811

Jie Yan

Central University of Finance and Economics ( email )

770 Middle Road
Dresden, ME 04342
United States

Jing Liu

Central University of Finance and Economics ( email )

770 Middle Road
Dresden, ME 04342
United States

Yun Chen

Central University of Finance and Economics ( email )

770 Middle Road
Dresden, ME 04342
United States

Tao You

affiliation not provided to SSRN ( email )

No Address Available

Xiaoke Ma

Xidian University - School of Computer Science and Technology ( email )

Xi'an, Shaanxi 710126
China

Zhong-Yuan Zhang (Contact Author)

Central University of Finance and Economics ( email )

770 Middle Road
Dresden, ME 04342
United States

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