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Neural graph embeddings as explicit low-rank matrix factorization for link prediction

Asan Agibetov

2022Pattern Recognition31 citationsDOIOpen Access PDF

Abstract

Learning good quality neural graph embeddings has long been achieved by minimzing the pointwise mutual information (PMI) for co-occuring nodes in simulated random walks. This design choice has been mostly popularized by the direct application of the highly-successful word embedding algorithm word2vec to predicting the formation of new links in social, co-citation, and biological networks. However, such a skeuomorphic design of graph embedding methods entails a truncation of information coming from pairs of nodes with low PMI. To circumvent this issue, we propose an improved approach to learning low-rank factorization embeddings that incorporate information from such unlikely pairs of nodes and show that it can improve the link prediction performance of baseline methods from 1.2% to 24.2%. Based on our results and observations, we outline further steps that could improve the design of next graph embedding algorithms that are based on matrix factorizaion.

Topics & Concepts

EmbeddingComputer sciencePointwiseGraph embeddingMatrix decompositionTheoretical computer scienceLink (geometry)GraphRandom walkWord2vecAdjacency matrixRank (graph theory)Artificial intelligenceMathematicsCombinatoricsPhysicsComputer networkStatisticsMathematical analysisQuantum mechanicsEigenvalues and eigenvectorsComplex Network Analysis TechniquesAdvanced Graph Neural NetworksOpinion Dynamics and Social Influence
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