LGOct 9, 2022

Deep Clustering: A Comprehensive Survey

arXiv:2210.04142v1244 citationsh-index: 43
Originality Synthesis-oriented
AI Analysis

This is an incremental survey that organizes existing deep clustering literature for researchers and practitioners in machine learning and data mining.

The paper provides a comprehensive survey of deep clustering methods, categorizing them based on data sources and initial conditions to address gaps in existing surveys that focus on single-view fields and network architectures.

Cluster analysis plays an indispensable role in machine learning and data mining. Learning a good data representation is crucial for clustering algorithms. Recently, deep clustering, which can learn clustering-friendly representations using deep neural networks, has been broadly applied in a wide range of clustering tasks. Existing surveys for deep clustering mainly focus on the single-view fields and the network architectures, ignoring the complex application scenarios of clustering. To address this issue, in this paper we provide a comprehensive survey for deep clustering in views of data sources. With different data sources and initial conditions, we systematically distinguish the clustering methods in terms of methodology, prior knowledge, and architecture. Concretely, deep clustering methods are introduced according to four categories, i.e., traditional single-view deep clustering, semi-supervised deep clustering, deep multi-view clustering, and deep transfer clustering. Finally, we discuss the open challenges and potential future opportunities in different fields of deep clustering.

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