2023
DOI: 10.21203/rs.3.rs-2626833/v1
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A Hybrid Clustering Approach for link prediction in Heterogeneous Information Networks

Abstract: In recent years, researchers from academic and industrial fields have become increasingly interested in social network data to extract meaningful information. This information is used in applications such as link prediction between people groups, community detection, protein module identification, etc. Therefore, the clustering technique has emerged as a solution to finding similarities between social network members. Recently, in most graph clustering solutions, the structural similarity of nodes is combined … Show more

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