Author:
Szczepankiewicz Karolina,Popowicz Adam,Charkiewicz Kamil,Nałęcz-Charkiewicz Katarzyna,Szczepankiewicz Michał,Lasota Sławomir,Zawistowski Paweł,Radlak Krystian
Abstract
AbstractDeep neural networks (DNNs) have achieved outstanding results in domains such as image processing, computer vision, natural language processing and bioinformatics. In recent years, many methods have been proposed that can provide a visual explanation of decision made by such classifiers. Saliency maps are probably the most popular. However, it is still unclear how to properly interpret saliency maps for a given image and which techniques perform most accurately. This paper presents a methodology to practically evaluate the real effectiveness of saliency map generation methods. We used three state-of-the-art network architectures along with specially prepared benchmark datasets, and we proposed a novel metric to provide a quantitative comparison of the methods. The comparison identified the most reliable techniques and the solutions which usually failed in our tests.
Publisher
Springer Science and Business Media LLC
Reference35 articles.
1. Guidotti, R. et al. A survey of methods for explaining black box models. ACM Comput. Surv. 51, 1–42 (2018).
2. Ribeiro, M. T., Singh, S. & Guestrin, C. “why should i trust you?”: Explaining the predictions of any classifier. In Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD ’16, 1135–1144 (Association for Computing Machinery, 2016).
3. Chakraborty, S. et al. Interpretability of deep learning models: A survey of results. In 2017 IEEE SmartWorld, Ubiquitous Intelligence Computing, Advanced Trusted Computed, Scalable Computing Communications, Cloud Big Data Computing, Internet of People and Smart City Innovation (SmartWorld/SCALCOM/UIC/ATC/CBDCom/IOP/SCI), 1–6 (2017).
4. Gilpin, L. H. et al. Explaining explanations: An overview of interpretability of machine learning (2019). arXiv:1806.00069.
5. Doshi-Velez, F. & Kim, B. A roadmap for a rigorous science of interpretability. (2017). arXiv:1702.08608.
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