Interaction Network Analysis Using Semantic Similarity Based on Translation Embeddings

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Date
2019
Volume
11702
Issue
Journal
Series Titel
Book Title
Publisher
Berlin ; Heidelberg : Springer
Abstract

Biomedical knowledge graphs such as STITCH, SIDER, and Drugbank provide the basis for the discovery of associations between biomedical entities, e.g., interactions between drugs and targets. Link prediction is a paramount task and represents a building block for supporting knowledge discovery. Although several approaches have been proposed for effectively predicting links, the role of semantics has not been studied in depth. In this work, we tackle the problem of discovering interactions between drugs and targets, and propose SimTransE, a machine learning-based approach that solves this problem effectively. SimTransE relies on translating embeddings to model drug-target interactions and values of similarity across them. Grounded on the vectorial representation of drug-target interactions, SimTransE is able to discover novel drug-target interactions. We empirically study SimTransE using state-of-the-art benchmarks and approaches. Experimental results suggest that SimTransE is competitive with the state of the art, representing, thus, an effective alternative for knowledge discovery in the biomedical domain.

Description
Keywords
Konferenzschrift, Knowledge graphs, Embeddings, Similarity function
Citation
Manzoor Bajwa, A., Collarana, D., & Vidal, M.-E. (2019). Interaction Network Analysis Using Semantic Similarity Based on Translation Embeddings (M. Acosta, P. Cudré-Mauroux, M. Maleshkova, T. Pellegrini, H. Sack, & Y. Sure-Vetter, eds.). Berlin ; Heidelberg : Springer. https://doi.org//10.1007/978-3-030-33220-4_18
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License
CC BY 4.0 Unported