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Generative Adversarial Zero-Shot Relational Learning for Knowledge Graphs

Pengda Qin, Xin Wang, Wenhu Chen, Chunyun Zhang, Weiran Xu, William Yang Wang

2020Proceedings of the AAAI Conference on Artificial Intelligence69 citationsDOIOpen Access PDF

Abstract

Large-scale knowledge graphs (KGs) are shown to become more important in current information systems. To expand the coverage of KGs, previous studies on knowledge graph completion need to collect adequate training instances for newly-added relations. In this paper, we consider a novel formulation, zero-shot learning, to free this cumbersome curation. For newly-added relations, we attempt to learn their semantic features from their text descriptions and hence recognize the facts of unseen relations with no examples being seen. For this purpose, we leverage Generative Adversarial Networks (GANs) to establish the connection between text and knowledge graph domain: The generator learns to generate the reasonable relation embeddings merely with noisy text descriptions. Under this setting, zero-shot learning is naturally converted to a traditional supervised classification task. Empirically, our method is model-agnostic that could be potentially applied to any version of KG embeddings, and consistently yields performance improvements on NELL and Wiki dataset.

Topics & Concepts

Knowledge graphLeverage (statistics)Computer scienceGenerative grammarAdversarial systemArtificial intelligenceGenerator (circuit theory)GraphNatural language processingZero (linguistics)Relation (database)Task (project management)Machine learningTheoretical computer scienceData miningLinguisticsPhysicsManagementPhilosophyEconomicsQuantum mechanicsPower (physics)Topic ModelingAdvanced Graph Neural NetworksDomain Adaptation and Few-Shot Learning
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