伪标签增强的多视角多层概念分解模糊聚类
首发时间:2023-04-21
摘要:多视角聚类近些年被广泛关注,其旨在利用多视角数据中不同视角的协作以提升聚类的效果。近年来,一些有效的多视角聚类算法已被提出,但这些方法仍然存在一些问题需要进一步深入研究:首先,大多数多视角聚类算法仅仅挖掘了视角间单层次信息。其次,大部分基于表示学习的多视角聚类算法分裂了表示学习与聚类任务针对上述问题,本文提出了一种新的伪标签增强的多视角多层概念分解模糊聚类。该算法通过多视角概念分解提取多层表示,使用多视角非负矩阵分解探索了共性表示,并提出了一个联合优化框架,使得多层概念分解学习、伪标签增强的共性表示学习和聚类划分在该框架中能够相互优化。本文提出的算法与多种相关聚类算法进行了实验比较,实验结果表明本文所提算法的性能优于所对比的算法。
关键词: 人工智能 多视角 多层概念分解 伪标签学习 模糊聚类
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Pseudo-label Enhanced Multi-view Deep Concept Factorization Fuzzy Clustering
Abstract:Multi-view clustering has received much attention in recent years, which aims to improve the clustering performance by using cooperative learning of different views. In recent years, some effective multi-view clustering methods have been proposed, but these methods still have some issues that need to further research. First, most multi-view clustering methods only mine single-level information between views. Secondly, most of multi-view clustering methods based on the representation learning split the representation learning and clustering tasks To address the above problems, this paper proposes a new pseudo-label enhanced multi-view deep concept factorization fuzzy clustering. The method extracts multi-layer representations through multi-view concept factorization, explores the common representation by multi-view non-negative matrix factorization, and proposes a joint optimization framework in which multi-layer concept factorization learning, pseudo-label enhanced common representation learning, and clustering partition can optimize each other. The proposed algorithm is experimentally compared with a variety of related clustering methods, and the experimental results show that the performance of the proposed method outperforms the compared methods.
Keywords: artificial intelligence multi-view concept factorization pseudo-label learning fuzzy clustering
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伪标签增强的多视角多层概念分解模糊聚类
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