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Embedding Biomedical Ontologies by Jointly Encoding Network Structure and Textual Node Descriptors

机译:通过联合编码网络结构和文本节点描述符嵌入生物医学本体

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Network Embedding (NE) methods, which map network nodes to low-dimensional feature vectors, have wide applications in network analysis and bioinformatics. Many existing NE methods rely only on network structure, overlooking other information associated with the nodes, e.g., text describing the nodes. Recent attempts to combine the two sources of information only consider local network structure. We extend NODE2 VEC. a well-known NE method that considers broader network structure, to also consider textual node descriptors using recurrent neural encoders. Our method is evaluated on link prediction in two networks derived from UMLS. Experimental results demonstrate the effectiveness of the proposed approach compared to previous work.
机译:将网络节点映射到低维特征向量的网络嵌入(NE)方法在网络分析和生物信息学中具有广泛的应用。许多现有的NE方法仅依赖于网络结构,而忽略了与节点相关的其他信息,例如描述节点的文本。最近结合这两种信息源的尝试仅考虑了本地网络结构。我们扩展了NODE2 VEC。一种考虑广泛网络结构的知名NE方法,也要考虑使用递归神经编码器的文本节点描述符。我们的方法是在两个从UMLS派生的网络中对链接预测进行评估的。实验结果证明了与以前的工作相比,该方法的有效性。

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