Timezone: »
In this paper, we study two challenges in clustering analysis, namely, how to cluster multi-view data and how to perform clustering without parameter selection on cluster size. To this end, we propose a novel objective function to project raw data into one space in which the projection embraces the geometric consistency (GC) and the cluster assignment consistency (CAC). To be specific, the GC aims to learn a connection graph from a projection space wherein the data points are connected if and only if they belong to the same cluster. The CAC aims to minimize the discrepancy of pairwise connection graphs induced from different views based on the view-consensus assumption, \textit{i.e.}, different views could produce the same cluster assignment structure as they are different portraits of the same object. Thanks to the view-consensus derived from the connection graph, our method could achieve promising performance in learning view-specific representation and eliminating the heterogeneous gaps across different views. Furthermore, with the proposed objective, it could learn almost all parameters including the cluster number from data without labor-intensive parameter selection. Extensive experimental results show the promising performance achieved by our method on five datasets comparing with nine state-of-the-art multi-view clustering approaches.
Author Information
Xi Peng (Sichuan University)
Zhenyu Huang (Sichuan University)
Jiancheng Lv (Sichuan University)
Hongyuan Zhu (Institute for Infocomm, Research Agency for Science, Technology and Research (A*STAR) Singapore)
Joey Tianyi Zhou (A*STAR)
Related Events (a corresponding poster, oral, or spotlight)
-
2019 Poster: COMIC: Multi-view Clustering Without Parameter Selection »
Fri. Jun 14th 01:30 -- 04:00 AM Room Pacific Ballroom #111
More from the Same Authors
-
2023 Poster: Calibrating Multimodal Learning »
Huan Ma · qingyang zhang · Changqing Zhang · Bingzhe Wu · Huazhu Fu · Joey Tianyi Zhou · Qinghua Hu -
2023 Poster: dugMatting: Decomposed-Uncertainty-Guided Matting »
Jiawei Wu · Changqing Zhang · Zuoyong Li · Huazhu Fu · Xi Peng · Joey Tianyi Zhou -
2023 Poster: Provable Dynamic Fusion for Low-Quality Multimodal Data »
qingyang zhang · Haitao Wu · Changqing Zhang · Qinghua Hu · Huazhu Fu · Joey Tianyi Zhou · Xi Peng -
2023 Oral: Calibrating Multimodal Learning »
Huan Ma · qingyang zhang · Changqing Zhang · Bingzhe Wu · Huazhu Fu · Joey Tianyi Zhou · Qinghua Hu -
2023 Poster: XAI Beyond Classification: Interpretable Neural Clustering »
Xi Peng · Yunfan Li · Ivor W. Tsang · Hongyuan Zhu · Jiancheng Lv · Joey Tianyi Zhou -
2021 Poster: Poolingformer: Long Document Modeling with Pooling Attention »
Hang ZHANG · Yeyun Gong · Yelong Shen · Weisheng Li · Jiancheng Lv · Nan Duan · Weizhu Chen -
2021 Spotlight: Poolingformer: Long Document Modeling with Pooling Attention »
Hang ZHANG · Yeyun Gong · Yelong Shen · Weisheng Li · Jiancheng Lv · Nan Duan · Weizhu Chen