Node-degree aware edge sampling mitigates inflated classification performance in biomedical random walk-based graph representation learning

Author:

Cappelletti Luca1ORCID,Rekerle Lauren2ORCID,Fontana Tommaso1ORCID,Hansen Peter2ORCID,Casiraghi Elena13ORCID,Ravanmehr Vida2ORCID,Mungall Christopher J3ORCID,Yang Jeremy J4ORCID,Spranger Leonard5ORCID,Karlebach Guy2ORCID,Caufield J Harry3ORCID,Carmody Leigh2ORCID,Coleman Ben26ORCID,Oprea Tudor I4ORCID,Reese Justin3ORCID,Valentini Giorgio17ORCID,Robinson Peter N2678ORCID

Affiliation:

1. AnacletoLab, Dipartimento di Informatica, Università degli Studi di Milano , Milano 20133, Italy

2. The Jackson Laboratory for Genomic Medicine , CT 06032, United States

3. Division of Environmental Genomics and Systems Biology, Lawrence Berkeley National Laboratory , Berkeley, CA 94710, United States

4. Department of Internal Medicine and UNM Comprehensive Cancer Center, UNM School of Medicine , Albuquerque, NM 87102, United States

5. Institute of Bioinformatics, Freie Universität Berlin , Berlin, 14195, Germany

6. Institute for Systems Genomics, University of Connecticut , Farmington, CT 06032, United States

7. ELLIS—European Laboratory for Learning and Intelligent Systems

8. Berlin Institute of Health, Charité – Universitätsmedizin Berlin , Berlin, 10117, Germany

Abstract

Abstract Motivation Graph representation learning is a family of related approaches that learn low-dimensional vector representations of nodes and other graph elements called embeddings. Embeddings approximate characteristics of the graph and can be used for a variety of machine-learning tasks such as novel edge prediction. For many biomedical applications, partial knowledge exists about positive edges that represent relationships between pairs of entities, but little to no knowledge is available about negative edges that represent the explicit lack of a relationship between two nodes. For this reason, classification procedures are forced to assume that the vast majority of unlabeled edges are negative. Existing approaches to sampling negative edges for training and evaluating classifiers do so by uniformly sampling pairs of nodes. Results We show here that this sampling strategy typically leads to sets of positive and negative examples with imbalanced node degree distributions. Using representative heterogeneous biomedical knowledge graph and random walk-based graph machine learning, we show that this strategy substantially impacts classification performance. If users of graph machine-learning models apply the models to prioritize examples that are drawn from approximately the same distribution as the positive examples are, then performance of models as estimated in the validation phase may be artificially inflated. We present a degree-aware node sampling approach that mitigates this effect and is simple to implement. Availability and implementation Our code and data are publicly available at https://github.com/monarch-initiative/negativeExampleSelection.

Funder

National Institutes of Health

National Cancer Institute

Publisher

Oxford University Press (OUP)

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