Title
A deep learning and heuristic methodology for predicting breakups in social network structures
Abstract
Literature have focused on studying the apparent and latent interactions within social graphs as an n-ary operation, which yields binary outputs comprising positives (friends, likes, etc.) and negatives (foes, dislikes, etc.). Inasmuch as interactions constitute the bedrock of any given social network (SN) structure; there exist scenarios where an interaction, which was once considered a positive, transmutes into a negative as a result of one or more indicators which have affected the interaction quality. At present, this transmutation has to be manually executed by the affected actors in the SN. These manual transmutations can be quite inefficient, ineffective, and a mishap might have been incurred by the constituent actors and the SN structure prior to a resolution. Our problem statement aims at automatically flagging positive ties that should be considered for breakups or rifts (negative-tie state), as they tend to pose potential threats to actors and the SN. Therefore, we have proposed ClasReg: a unique framework capable of breakup and link predictions.
Year
DOI
Venue
2022
10.1111/coin.12502
COMPUTATIONAL INTELLIGENCE
Keywords
DocType
Volume
breakup, link prediction, representation learning, unlink
Journal
38
Issue
ISSN
Citations 
4
0824-7935
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Bonaventure Chidube Molokwu100.34
Shaon Bhatta Shuvo200.34
Ziad Kobti300.34