Spectral Clustering of Attributed Multi-relational Graphs

Spectral Clustering of Attributed Multi-relational Graphs

Abstract

Graph clustering aims at discovering a natural grouping of the nodes such that similar nodes are assigned to a common cluster. Many different algorithms have been proposed in the literature: for simple graphs, for graphs with attributes associated to nodes, and for graphs where edges represent different types of relations among nodes. However, complex data in many domains can be represented as both attributed and multi-relational networks. In this paper, we propose SpectralMix, a joint dimensionality reduction technique for multi-relational graphs with categorical node attributes. SpectralMix integrates all information available from the attributes, the different types of relations, and the graph structure to enable a sound interpretation of the clustering results. Moreover, it generalizes existing techniques: it reduces to spectral embedding and clustering when only applied to a single graph and to homogeneity analysis when applied to categorical data. Experiments conducted on several real-world datasets enable us to detect dependencies between graph structure and categorical attributes, moreover, they exhibit the superiority of SpectralMix over existing methods.

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Authors
  • Sadikaj, Ylli
  • Velaj, Yllka
  • Behzadi Soheil, Sahar
  • Plant, Claudia
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Shortfacts
Category
Paper in Conference Proceedings or in Workshop Proceedings (Paper)
Event Title
27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining (KDD)
Divisions
Data Mining and Machine Learning
Event Location
Singapore
Event Type
Conference
Event Dates
14.-18.08.2021
Series Name
KDD '21: Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining
ISSN/ISBN
978-1-4503-8332-5
Page Range
pp. 1431-1440
Date
14 August 2021
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