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Resource Recommendation Based on Industrial Knowledge Graph in Low-Resource Conditions

Yangshengyan Liu, Fu Gu, Xinjian Gu, Yijie Wu, Jianfeng Guo, Jin Zhang

2022International Journal of Computational Intelligence Systems21 citationsDOIOpen Access PDF

Abstract

Abstract Resource recommendation is extremely challenging under low-resource conditions because representation learning models require sufficient triplets for their training, and the presence of massive long-tail resources leads to data sparsity and cold-start problems. In this paper, an industrial knowledge graph is developed to integrate resources for manufacturing enterprises, and we further formulate long-tail recommendations as a few-shot relational learning problem of learning-to-recommend resources with few interactions under low-resource conditions. First, an industrial knowledge graph is constructed based on the predesigned resource schema. Second, we conduct schema-based reasoning on the schema to heuristically complete the knowledge graph. At last, we propose a multi-head attention-based meta relational learning model with schema-based reasoning to recommend long-tail resources under low-resource conditions. With the IN-Train setting, 5-shot experimental results on the NELL-One and Wiki-One datasets achieve average improvements of 28.8 and 13.3% respectively, compared with MetaR. Empirically, the attention mechanism with relation space translation learns the most important relations for fast convergence. The proposed graph-based platform specifies how to recommend resources using the industrial knowledge graph under low-resource conditions.

Topics & Concepts

Computer scienceSchema (genetic algorithms)GraphKnowledge graphResource (disambiguation)Knowledge managementArtificial intelligenceMachine learningTheoretical computer scienceComputer networkAdvanced Graph Neural NetworksRecommender Systems and TechniquesTopic Modeling
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