Exploiting Relational Information in Social Networks using Geometric Deep Learning on Hypergraphs

Abstract

Online social networks are constituted by a diverse set of entities including users, images and posts which makes the task of predicting interdependencies between entities challenging. We need a model that transfers information from a given type of relations between entities to predict other types of relations, irrespective of the type of entity. In order to devise a generic framework, one needs to capture the relational information between entities without any entity dependent information. However, there are two challenges: (a) a social network has an intrinsic community structure. In these communities, some relations are much more complicated than pairwise relations, thus cannot be simply modeled by a graph; (b) there are different types of entities and relations in a social network, taking into account all of them makes it difficult to formulate a model. In this paper, we claim that representing social networks using hypergraphs improves the task of predicting missing information about an entity by capturing higher-order relations. We study the behavior of our method by performing experiments on CLEF dataset consisting of images from Flickr, an online photo sharing social network.

Publication
In International Conference in Multimedia Retrieval 2018

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