Version 2 2024-06-05, 04:36Version 2 2024-06-05, 04:36
Version 1 2018-09-10, 14:29Version 1 2018-09-10, 14:29
conference contribution
posted on 2024-06-05, 04:36authored byN Ho, XL Nguyen, M Yurochkin, HH Bui, V Huynh, D Phung
Copyright 2017 by the author(s). We propose a novel approach to the problem of multilevel clustering, which aims to simultaneously partition data in each group and discover grouping patterns among groups in a potentially large hierarchically structured corpus of data. Our method involves a joint optimization formulation over several spaces of discrete probability measures, which are endowed with Wasserstein distance metrics. We propose a number of variants of this problem, which admit fast optimization algorithms, by exploiting the connection to the problem of finding Wasserstein barycenters. Consistency properties are established for the estimates of both local and global clusters. Finally, experiment results with both synthetic and real data arc presented to demonstrate the flexibility and scalability of the proposed approach.
History
Volume
70
Pagination
2363-2378
Location
Sydney, New South Wales
Start date
2017-08-06
End date
2017-08-11
ISBN-13
9781510855144
Language
eng
Publication classification
E Conference publication, E1 Full written paper - refereed
Title of proceedings
ICML 2017: Proceedings of the 34th International Conference in Machine Learning
Event
Machine Learning. International Conference (34th : 2017 : Sydney, New South Wales)