Surrogate explanations for role discovery on graphs

被引:0
|
作者
Eoghan Cunningham
Derek Greene
机构
[1] University College Dublin,School of Computer Science
[2] University College Dublin,Insight Centre for Data Analytics
来源
Applied Network Science | / 8卷
关键词
Role discovery; Node embedding; Explainable artificial intelligence;
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学科分类号
摘要
Role discovery is the task of dividing the set of nodes on a graph into classes of structurally similar roles. Modern strategies for role discovery typically rely on graph embedding techniques, which are capable of recognising complex graph structures when reducing nodes to dense vector representations. However, when working with large, real-world networks, it is difficult to interpret or validate a set of roles identified according to these methods. In this work, motivated by advancements in the field of explainable artificial intelligence, we propose surrogate explanation for role discovery, a new framework for interpreting role assignments on large graphs using small subgraph structures known as graphlets. We demonstrate our framework on a small synthetic graph with prescribed structure, before applying them to a larger real-world network. In the second case, a large, multidisciplinary citation network, we successfully identify a number of important citation patterns or structures which reflect interdisciplinary research.
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