Predicting biomedical relationships using the knowledge and graph embedding cascade model

Volume: 14, Issue: 6, Pages: e0218264 - e0218264
Published: Jun 13, 2019
Abstract
Advances in machine learning and deep learning methods, together with the increasing availability of large-scale pharmacological, genomic, and chemical datasets, have created opportunities for identifying potentially useful relationships within biochemical networks. Knowledge embedding models have been found to have value in detecting knowledge-based correlations among entities, but little effort has been made to apply them to networks of...
Paper Details
Title
Predicting biomedical relationships using the knowledge and graph embedding cascade model
Published Date
Jun 13, 2019
Journal
Volume
14
Issue
6
Pages
e0218264 - e0218264
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