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Node Classification and Link Prediction in Social Graphs using RLVECN

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Published:30 July 2020Publication History

ABSTRACT

Node classification and link prediction problems in Social Network Analysis (SNA) remain open research problems with respect to Artificial Intelligence (AI). Inherent representations about social network structures can be effectively harnessed for training AI models in a bid to detect clusters via classification of actors as well as predict ties with regard to a given social network. In this paper, we have proposed a unique hybrid model: Representation Learning via Knowledge-Graph Embeddings and ConvNet (RLVECN). Our proposition is designed for analyzing and extracting expressive feature representations from social network structures to aid in link prediction, node classification and community detection tasks. RLVECN utilizes an edge sampling technique for exploiting features of a given social network via learning the context of each actor with respect to its associate actors.

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  • Published in

    cover image ACM Other conferences
    SSDBM '20: Proceedings of the 32nd International Conference on Scientific and Statistical Database Management
    July 2020
    241 pages
    ISBN:9781450388146
    DOI:10.1145/3400903

    Copyright © 2020 ACM

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    Publication History

    • Published: 30 July 2020

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    Overall Acceptance Rate56of146submissions,38%

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