Apr 2
2020

Interpretable Graph Representation Learning

E. Noutahi, D. Beaini, J. Horwood, P. Tossou

Recent work in graph neural networks (GNNs) has led to improvements in molecular activity and property prediction tasks. Unfortunately, GNNs often fail to capture the relative importance of interactions between molecular substructures, in part due to the absence of efficient intermediate pooling steps.

To address these issues, we propose LaPool (Laplacian Pooling), a novel, data-driven, and interpretable hierarchical graph pooling method that takes into account both node features and graph structure to improve molecular representation. We benchmark LaPool on molecular graph prediction and understanding tasks and show that it outperforms recent GNNs. Interestingly, LaPool also remains competitive on non-molecular tasks.

Both quantitative and qualitative assessments are done to demonstrate LaPool’s improved interpretability and highlight its potential benefits in drug design. Finally, we demonstrate LaPool’s utility for the generation of valid and novel molecules by incorporating it into an adversarial autoencoder.

Open Article
Read More
Read More
E. Noutahi, D. Beaini, J. Horwood, P. Tossou

Ready to Become
AI-Enabled?

Let’s explore how Valence can
accelerate your drug discovery efforts

Let's Talk

Get in Touch

* Name
* Subject
* Email Address
* Message
Company
Phone Number
Submit
Submit

Thank you for reaching out.
We will be in touch soon.

Oops! Something went wrong while submitting the form.