dc.contributor.author |
Patel, Harsh |
|
dc.contributor.author |
Sahni, Shivam |
|
dc.coverage.spatial |
United States of America |
|
dc.date.accessioned |
2022-11-16T10:49:50Z |
|
dc.date.available |
2022-11-16T10:49:50Z |
|
dc.date.issued |
2022-11 |
|
dc.identifier.citation |
Patel, Harsh and Sahni, Shivam, "Exploring explainability methods for graph neural networks", arXiv, Cornell University Library, DOI: arXiv:2211.01770, Nov. 2022. |
en_US |
dc.identifier.uri |
https://arxiv.org/abs/2211.01770 |
|
dc.identifier.uri |
https://repository.iitgn.ac.in/handle/123456789/8315 |
|
dc.description.abstract |
With the growing use of deep learning methods, particularly graph neural networks, which encode intricate interconnectedness information, for a variety of real tasks, there is a necessity for explainability in such settings. In this paper, we demonstrate the applicability of popular explainability approaches on Graph Attention Networks (GAT) for a graph-based super-pixel image classification task. We assess the qualitative and quantitative performance of these techniques on three different datasets and describe our findings. The results shed a fresh light on the notion of explainability in GNNs, particularly GATs. |
|
dc.description.statementofresponsibility |
by Harsh Patel and Shivam Sahni |
|
dc.language.iso |
en_US |
en_US |
dc.publisher |
Cornell University Library |
en_US |
dc.subject |
Graph neural networks |
en_US |
dc.subject |
GAT |
en_US |
dc.subject |
Explainability methods |
en_US |
dc.subject |
Image classification |
en_US |
dc.subject |
Pattern recognition |
en_US |
dc.title |
Exploring explainability methods for graph neural networks |
en_US |
dc.type |
Pre-Print Archive |
en_US |
dc.relation.journal |
arXiv |
|