Trustworthy multi-view clustering via alternating generative adversarial representation learning and fusion

对抗制 计算机科学 生成语法 聚类分析 代表(政治) 人工智能 稳健性(进化) 水准点(测量) 特征学习 一致性(知识库) 深度学习 机器学习 生成模型 政治 政治学 法学 生物化学 化学 大地测量学 基因 地理
作者
Wenqi Yang,Minhui Wang,Chang Tang,Xiao Zheng,Xinwang Liu,Kunlun He
出处
期刊:Information Fusion [Elsevier BV]
卷期号:107: 102323-102323 被引量:13
标识
DOI:10.1016/j.inffus.2024.102323
摘要

Multi-view clustering (MVC) has attached extensive attention as it provides an effective approach to deal with the unlabeled data in real-world applications. To enjoy the strong feature extraction capacity of deep learning, traditional shallow MVC methods are further extended to deep version. Though achieve superiorities in many fields, most existing deep MVC models are still limited by their lacking assurance of the trustworthiness and robustness. This drawback also leads to the possible poor clustering performance. To tackle this drawback, we propose an alternating generative adversarial learning strategy based network, termed as Alternating Generative Adversarial Representation Learning (AGARL) network for multi-view clustering, aiming to drive different views to fall into the same semantic space for the further alignment and information fusion. Various from the traditional generative adversarial learning strategy, the proposed alternating adversarial representation learning strategy successes in further aligning the distributions of the view-specific representations and exploring the cross-view consistency credited by its setting each view as the reference alternately. Then a consensus representative latent representation can be learned through an attention-like sub-network for all views. Finally, a self-supervised clustering module is employed in the proposed network to guide the learning of cluster assignment. In addition, comprehensive experiments on numerous benchmark MVC datasets have been performed to demonstrate the effectiveness of the proposed network compared to other state-of-the-art methods.
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