Title
Entropy based probabilistic collaborative clustering.
Abstract
A new collaborative framework is proposed for unsupervised learning.This framework allows algorithms of different families to work together.The collaboration process relies on the solutions matrices and their diversity.The convergence of the method is proved using variational EM. Unsupervised machine learning approaches involving several clustering algorithms working together to tackle difficult data sets are a recent area of research with a large number of applications such as clustering of distributed data, multi-expert clustering, multi-scale clustering analysis or multi-view clustering. Most of these frameworks can be regrouped under the umbrella of collaborative clustering, the aim of which is to reveal the common underlying structures found by the different algorithms while analyzing the data.Within this context, the purpose of this article is to propose a collaborative framework lifting the limitations of many of the previously proposed methods: Our proposed collaborative learning method makes possible for a wide range of clustering algorithms from different families to work together based solely on their clustering solutions, thus lifting previous limitation requiring identical prototypes between the different collaborators. Our proposed framework uses a variational EM as its theoretical basis for the collaboration process and can be applied to any of the previously mentioned collaborative contexts.In this article, we give the main ideas and theoretical foundations of our method, and we demonstrate its effectiveness in a series of experiments on real data sets as well as data sets from the literature.
Year
DOI
Venue
2017
10.1016/j.patcog.2017.07.014
Pattern Recognition
Keywords
Field
DocType
Collaborative clustering,EM algorithms,Entropy based methods
Fuzzy clustering,Data mining,CURE data clustering algorithm,Computer science,Consensus clustering,Artificial intelligence,Conceptual clustering,Cluster analysis,Clustering high-dimensional data,Pattern recognition,Correlation clustering,Brown clustering,Machine learning
Journal
Volume
Issue
ISSN
72
C
0031-3203
Citations 
PageRank 
References 
7
0.45
21
Authors
6
Name
Order
Citations
PageRank
Jérémie Sublime1122.38
Basarab Mateï2219.30
Guénaël Cabanes34410.48
Nistor Grozavu46716.76
Younès Bennani526953.18
Antoine Cornuéjols68619.57