Recently, the Deep Learning (DL) research community has focused on developing efficient and highly performing Neural Networks (NN). Meanwhile, the eXplainable AI (XAI) research community has focused on making Machine Learning (ML) and Deep Learning methods interpretable and transparent, seeking explainability. This work is a preliminary study on the applicability of Neural Architecture Search (NAS) (a sub-field of DL looking for automatic design of NN structures) in XAI. We propose Shallow2Deep, an evolutionary NAS algorithm that exploits local variability to restrain opacity of DL-systems through NN architectures simplification. Shallow2Deep effectively reduces NN complexity – therefore their opacity – while reaching state-of-the-art performances. Unlike its competitors, Shallow2Deep promotes variability of localised structures in NN, helping to reduce NN opacity. The proposed work analyses the role of local variability in NN architectures design, presenting experimental results that show how this feature is actually desirable.

Shallow2Deep: Restraining Neural Networks Opacity through Neural Architecture Search / Andrea Agiollo, Giovanni Ciatto, Andrea Omicini. - STAMPA. - 12688:(2021), pp. 63-82. (Intervento presentato al convegno 3rd International Workshop on Explainable and Transparent AI and Multi-Agent Systems (EXTRAAMAS 2021) tenutosi a Virtual event nel 3–4 May 2021) [10.1007/978-3-030-82017-6_5].

Shallow2Deep: Restraining Neural Networks Opacity through Neural Architecture Search

Andrea Agiollo
;
Giovanni Ciatto;Andrea Omicini
2021

Abstract

Recently, the Deep Learning (DL) research community has focused on developing efficient and highly performing Neural Networks (NN). Meanwhile, the eXplainable AI (XAI) research community has focused on making Machine Learning (ML) and Deep Learning methods interpretable and transparent, seeking explainability. This work is a preliminary study on the applicability of Neural Architecture Search (NAS) (a sub-field of DL looking for automatic design of NN structures) in XAI. We propose Shallow2Deep, an evolutionary NAS algorithm that exploits local variability to restrain opacity of DL-systems through NN architectures simplification. Shallow2Deep effectively reduces NN complexity – therefore their opacity – while reaching state-of-the-art performances. Unlike its competitors, Shallow2Deep promotes variability of localised structures in NN, helping to reduce NN opacity. The proposed work analyses the role of local variability in NN architectures design, presenting experimental results that show how this feature is actually desirable.
2021
Explainable and Transparent AI and Multi-Agent Systems. Third International Workshop, EXTRAAMAS 2021
63
82
Shallow2Deep: Restraining Neural Networks Opacity through Neural Architecture Search / Andrea Agiollo, Giovanni Ciatto, Andrea Omicini. - STAMPA. - 12688:(2021), pp. 63-82. (Intervento presentato al convegno 3rd International Workshop on Explainable and Transparent AI and Multi-Agent Systems (EXTRAAMAS 2021) tenutosi a Virtual event nel 3–4 May 2021) [10.1007/978-3-030-82017-6_5].
Andrea Agiollo, Giovanni Ciatto, Andrea Omicini
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/838540
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