Authors
Seiji Maekawa, Yuya Sasaki, George Fletcher, Makoto Onizuka
Publication date
2023/5/1
Journal
Information Systems
Volume
115
Pages
102195
Publisher
Pergamon
Description
Generating large synthetic attributed graphs with node labels is an important task to support various experimental studies for graph analytic methods. Existing graph generators fail to simultaneously simulate core/border and homophily/heterophily phenomena which real-world graphs exhibit, i.e., the relationships between labels, attributes, and topology. Motivated by this limitation, we propose GenCAT, an attributed graph generator for controlling those relationships, which has the following advantages. (i) GenCAT generates graphs with user-specified node degrees and flexibly controls the relationship between nodes and labels by incorporating the connection proportion for each node to classes. (ii) Generated attribute values follow user-specified distributions, and users can flexibly control the correlation between the attributes and labels. (iii) Graph generation scales linearly to the number of edges. GenCAT is the …
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