Litcius/Paper detail

Visualizing Graph Neural Networks With CorGIE: <u>Cor</u>responding a <u>G</u>raph to <u>I</u>ts <u>E</u>mbedding

Zipeng Liu, Yang Wang, Jürgen Bernard, Tamara Munzner

2022IEEE Transactions on Visualization and Computer Graphics19 citationsDOIOpen Access PDF

Abstract

Graph neural networks (GNNs) are a class of powerful machine learning tools that model node relations for making predictions of nodes or links. GNN developers rely on quantitative metrics of the predictions to evaluate a GNN, but similar to many other neural networks, it is difficult for them to understand if the GNN truly learns characteristics of a graph as expected. We propose an approach to corresponding an input graph to its node embedding (aka latent space), a common component of GNNs that is later used for prediction. We abstract the data and tasks, and develop an interactive multi-view interface called CorGIE to instantiate the abstraction. As the key function in CorGIE, we propose the K-hop graph layout to show topological neighbors in hops and their clustering structure. To evaluate the functionality and usability of CorGIE, we present how to use CorGIE in two usage scenarios, and conduct a case study with five GNN experts. Availability: Open-source code at https://github.com/zipengliu/corgie-ui/, supplemental materials & video at https://osf.io/tr3sb/.

Topics & Concepts

Computer scienceTheoretical computer scienceEmbeddingGraphGraph embeddingCluster analysisAbstractionClustering coefficientAKAUsabilitySource codeMachine learningVisualizationArtificial neural networkArtificial intelligenceData miningHuman–computer interactionProgramming languageEpistemologyPhilosophyLibrary scienceData Visualization and AnalyticsAdvanced Graph Neural NetworksTopological and Geometric Data Analysis