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Review on Learning and Extracting Graph Features for Link Prediction

Ece C. Mutlu, Toktam Oghaz, Amirarsalan Rajabi, Ivan Garibay

2020Machine Learning and Knowledge Extraction42 citationsDOIOpen Access PDF

Abstract

Link prediction in complex networks has attracted considerable attention from interdisciplinary research communities, due to its ubiquitous applications in biological networks, social networks, transportation networks, telecommunication networks, and, recently, knowledge graphs. Numerous studies utilized link prediction approaches in order sto find missing links or predict the likelihood of future links as well as employed for reconstruction networks, recommender systems, privacy control, etc. This work presents an extensive review of state-of-art methods and algorithms proposed on this subject and categorizes them into four main categories: similarity-based methods, probabilistic methods, relational models, and learning-based methods. Additionally, a collection of network data sets has been presented in this paper, which can be used in order to study link prediction. We conclude this study with a discussion of recent developments and future research directions.

Topics & Concepts

Computer scienceProbabilistic logicLink (geometry)Recommender systemMachine learningData miningArtificial intelligenceGraphLink analysisData scienceMissing dataOrder (exchange)Subject (documents)Data collectionSocial network analysisFactor graphKnowledge graphComplex networkData modelingStatistical relational learningGraph theoryStatistical modelRelational databaseBayesian networkSocial network (sociolinguistics)Data typeInformation privacyComplex Network Analysis TechniquesAdvanced Graph Neural NetworksBioinformatics and Genomic Networks
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