{"title":"超图链接预测:学习药物相互作用网络嵌入","authors":"M. Vaida, Kevin Purcell","doi":"10.1109/ICMLA.2019.00299","DOIUrl":null,"url":null,"abstract":"Graph neural networks (GNNs) have revolutionized deep learning on non-Euclidean data domains, and are extensively used in fields such as social media and recommendation systems. However, complex relational data structures such as hypergraphs, pose challenges for GNNs in terms of their ability to model, embed, and learn relational complexities of multigraphs. Most GNNs focus on capturing flat local neighborhoods of a node thus failing to account for structural properties of multi-relational graphs. This paper introduces Hypergraph Link Prediction (HLP), a novel approach of encoding the multilink structure of graphs. HLP allows pooling operations to incorporate a 360 degrees overview of a node interaction profile, by learning local neighborhood and global hypergraph structure simultaneously. Global graph information is injected into node representations, such that unique global structural patterns of every node are encoded at the node level. HLP leverages the augmented hypergraph adjacency matrix to incorporate the depth of the hypergraph in the convolutional layers. The model is applied to the task of predicting multi-drug interactions, by modeling relations between pairs of drugs as a hypergraph. The existence and the type of drug interactions between the same pair of drugs are mapped as multiple edges, and can be inferred by learning the multigraph local and global structure concurrently. To account for molecular graph properties of a drug, additional drug chemical graph structural fingerprints are included as node attributes.","PeriodicalId":436714,"journal":{"name":"2019 18th IEEE International Conference On Machine Learning And Applications (ICMLA)","volume":"72 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2019-12-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"8","resultStr":"{\"title\":\"Hypergraph Link Prediction: Learning Drug Interaction Networks Embeddings\",\"authors\":\"M. Vaida, Kevin Purcell\",\"doi\":\"10.1109/ICMLA.2019.00299\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Graph neural networks (GNNs) have revolutionized deep learning on non-Euclidean data domains, and are extensively used in fields such as social media and recommendation systems. 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引用次数: 8
摘要
图神经网络(gnn)已经彻底改变了非欧几里得数据领域的深度学习,并被广泛应用于社交媒体和推荐系统等领域。然而,复杂的关系数据结构(如超图)在建模、嵌入和学习多图关系复杂性的能力方面给gnn带来了挑战。大多数gnn专注于捕获节点的平面局部邻域,因此无法考虑多关系图的结构属性。介绍了一种对图的多链接结构进行编码的新方法——超图链接预测(Hypergraph Link Prediction, HLP)。通过同时学习局部邻域和全局超图结构,HLP允许池化操作合并节点交互配置文件的360度概述。全局图形信息被注入到节点表示中,这样每个节点的唯一全局结构模式就在节点级别被编码。HLP利用增广的超图邻接矩阵将超图的深度合并到卷积层中。该模型通过将药物对之间的关系建模为超图,应用于预测多种药物相互作用的任务。同一对药物之间相互作用的存在和类型被映射为多个边,并可以通过同时学习多图局部和全局结构来推断。为了说明药物的分子图属性,额外的药物化学图结构指纹被包括作为节点属性。
Hypergraph Link Prediction: Learning Drug Interaction Networks Embeddings
Graph neural networks (GNNs) have revolutionized deep learning on non-Euclidean data domains, and are extensively used in fields such as social media and recommendation systems. However, complex relational data structures such as hypergraphs, pose challenges for GNNs in terms of their ability to model, embed, and learn relational complexities of multigraphs. Most GNNs focus on capturing flat local neighborhoods of a node thus failing to account for structural properties of multi-relational graphs. This paper introduces Hypergraph Link Prediction (HLP), a novel approach of encoding the multilink structure of graphs. HLP allows pooling operations to incorporate a 360 degrees overview of a node interaction profile, by learning local neighborhood and global hypergraph structure simultaneously. Global graph information is injected into node representations, such that unique global structural patterns of every node are encoded at the node level. HLP leverages the augmented hypergraph adjacency matrix to incorporate the depth of the hypergraph in the convolutional layers. The model is applied to the task of predicting multi-drug interactions, by modeling relations between pairs of drugs as a hypergraph. The existence and the type of drug interactions between the same pair of drugs are mapped as multiple edges, and can be inferred by learning the multigraph local and global structure concurrently. To account for molecular graph properties of a drug, additional drug chemical graph structural fingerprints are included as node attributes.