Difference between revisions of "Publications/veyrin-forrer.22.egc"
From LRDE
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| note = In French, Best paper award |
| note = In French, Best paper award |
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| category = national |
| category = national |
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| lrdekeywords = IA |
| lrdekeywords = IA |
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| lrdenewsdate = 2022-03-24 |
| lrdenewsdate = 2022-03-24 |
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− | | abstract = While existing GNN's explanation methods explain the decision by studying the output layer, we propose a method that analyzes the hidden layers to identify the neurons that are co-activated for a class. |
+ | | abstract = While existing GNN's explanation methods explain the decision by studying the output layer, we propose a method that analyzes the hidden layers to identify the neurons that are co-activated for a class. We associate to them a graph. |
| type = inproceedings |
| type = inproceedings |
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| id = veyrin-forrer.22.egc |
| id = veyrin-forrer.22.egc |
Revision as of 14:44, 5 April 2022
- Authors
- Luca Veyrin-Forrer, Ataollah Kamal, Stefan Duffner, Marc Plantevit, Céline Robardet
- Where
- Extraction et Gestion des Connaissances, EGC 2022Blois, France, 24 au 28 janvier 2022
- Type
- inproceedings
- Keywords
- IA
- Date
- 2022-03-24
Abstract
While existing GNN's explanation methods explain the decision by studying the output layer, we propose a method that analyzes the hidden layers to identify the neurons that are co-activated for a class. We associate to them a graph.
Bibtex (lrde.bib)
@InProceedings{ veyrin-forrer.22.egc, author = {Luca {Veyrin-Forrer} and Ataollah Kamal and Stefan Duffner and Marc Plantevit and C\'eline Robardet}, title = {Qu'est-ce que mon {GNN} capture vraiment ? {E}xploration des repr\'esentations internes d'un {GNN}}, booktitle = {Extraction et Gestion des Connaissances, {EGC} 2022, Blois, France, 24 au 28 janvier 2022}, pages = {159--170}, year = {2022}, opturl = {http://editions-rnti.fr/?inprocid=1002725}, note = {In French, Best paper award}, category = {national}, abstract = {While existing GNN's explanation methods explain the decision by studying the output layer, we propose a method that analyzes the hidden layers to identify the neurons that are co-activated for a class. We associate to them a graph.} }