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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence, 35 / No. 13: AAAI-21 Technical Tracks 13

Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation

February 1, 2023

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Abstract:

As an emerging field in Machine Learning, Explainable AI (XAI) has been offering remarkable performance in interpreting the decisions made by Convolutional Neural Networks (CNNs). To achieve visual explanations for CNNs, methods based on class activation mapping and randomized input sampling have gained great popularity. However, the attribution methods based on these techniques provide lower-resolution and blurry explanation maps that limit their explanation power. To circumvent this issue, visualization based on various layers is sought. In this work, we collect visualization maps from multiple layers of the model based on an attribution-based input sampling technique and aggregate them to reach a fine-grained and complete explanation. We also propose a layer selection strategy that applies to the whole family of CNN-based models, based on which our extraction framework is applied to visualize the last layers of each convolutional block of the model. Moreover, we perform an empirical analysis of the efficacy of derived lower-level information to enhance the represented attributions. Comprehensive experiments conducted on shallow and deep models trained on natural and industrial datasets, using both ground-truth and model-truth based evaluation metrics validate our proposed algorithm by meeting or outperforming the state-of-the-art methods in terms of explanation ability and visual quality, demonstrating that our method shows stability regardless of the size of objects or instances to be explained.

Authors

Sam Sattarzadeh

University of Toronto


Mahesh Sudhakar

University of Toronto


Anthony Lem

University of Toronto


Shervin Mehryar

University of Toronto


Konstantinos N Plataniotis

UofT


Jongseong Jang

LG AI Research


Hyunwoo Kim

LG AI Research


Yeonjeong Jeong

LG AI Research


Sangmin Lee

LG AI Research


Kyunghoon Bae

LG AI Research


DOI:

10.1609/aaai.v35i13.17384


Topics: AAAI

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HOW TO CITE:

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation Proceedings of the AAAI Conference on Artificial Intelligence, 35 (2021) 11639-11647.

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation AAAI 2021, 11639-11647.

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae (2021). Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation. Proceedings of the AAAI Conference on Artificial Intelligence, 35, 11639-11647.

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae. Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation. Proceedings of the AAAI Conference on Artificial Intelligence, 35 2021 p.11639-11647.

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae. 2021. Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation. "Proceedings of the AAAI Conference on Artificial Intelligence, 35". 11639-11647.

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae. (2021) "Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation", Proceedings of the AAAI Conference on Artificial Intelligence, 35, p.11639-11647

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae, "Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation", AAAI, p.11639-11647, 2021.

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae. "Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation". Proceedings of the AAAI Conference on Artificial Intelligence, 35, 2021, p.11639-11647.

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae. "Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation". Proceedings of the AAAI Conference on Artificial Intelligence, 35, (2021): 11639-11647.

Sam Sattarzadeh||Mahesh Sudhakar||Anthony Lem||Shervin Mehryar||Konstantinos N Plataniotis||Jongseong Jang||Hyunwoo Kim||Yeonjeong Jeong||Sangmin Lee||Kyunghoon Bae. Explaining Convolutional Neural Networks through Attribution-Based Input Sampling and Block-Wise Feature Aggregation. AAAI[Internet]. 2021[cited 2023]; 11639-11647.


ISSN: 2374-3468


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