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Neuro-symbolic representation learning on biological knowledge graphs

机译:关于生物知识图的神经象征性表示学习

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Motivation: Biological data and knowledge bases increasingly rely on Semantic Web technologies and the use of knowledge graphs for data integration, retrieval and federated queries. In the past years, feature learning methods that are applicable to graph-structured data are becoming available, but have not yet widely been applied and evaluated on structured biological knowledge. Results: We develop a novel method for feature learning on biological knowledge graphs. Our method combines symbolic methods, in particular knowledge representation using symbolic logic and automated reasoning, with neural networks to generate embeddings of nodes that encode for related information within knowledge graphs. Through the use of symbolic logic, these embeddings contain both explicit and implicit information. We apply these embeddings to the prediction of edges in the knowledge graph representing problems of function prediction, finding candidate genes of diseases, protein-protein interactions, or drug target relations, and demonstrate performance that matches and sometimes outperforms traditional approaches based on manually crafted features. Our method can be applied to any biological knowledge graph, and will thereby open up the increasing amount of Semantic Web based knowledge bases in biology to use in machine learning and data analytics.
机译:动机:生物数据和知识基础越来越依赖于语义Web技术和数据集成,检索和联合查询使用知识图的。在过去的几年中,地物学习方法,这些方法适用于图结构数据变得可用,但尚未被广泛应用,并在结构生物学知识进行评估。结果:我们开发的生物知识图形功能的学习的新方法。我们的方法结合的符号的方法,特别是知识表示使用符号逻辑和自动推理,用神经网络,以产生节点的嵌入其编码为知识图内的相关信息。通过使用符号逻辑,这些嵌入物同时包含显性和隐性信息。我们运用这些方式的嵌入在代表功能预测问题的知识图形边缘的预测,发现疾病,蛋白质 - 蛋白质相互作用,或药物靶标关系的候选基因,并证明性能匹配,有时甚至优于基于手工制作的特色传统方法。我们的方法可以适用于任何生物知识图表,并从而在生物开拓的语义Web基于知识库的增加量,使用机器学习和数据分析。

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