Analysis of Explainers of Black Box Deep Neural Networks for Computer Vision: A Survey

November 27, 2019 Β· The Cartographer Β· πŸ› Machine Learning and Knowledge Extraction

πŸ“š THE CARTOGRAPHER: The Cartographer
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"Title-pattern auto-detect: Analysis of Explainers of Black Box Deep Neural Networks for Computer Vision: A Survey"

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Authors Vanessa Buhrmester, David MΓΌnch, Michael Arens arXiv ID 1911.12116 Category cs.AI: Artificial Intelligence Cross-listed cs.CV Citations 428 Venue Machine Learning and Knowledge Extraction Last Checked 7 days ago
Abstract
Deep Learning is a state-of-the-art technique to make inference on extensive or complex data. As a black box model due to their multilayer nonlinear structure, Deep Neural Networks are often criticized to be non-transparent and their predictions not traceable by humans. Furthermore, the models learn from artificial datasets, often with bias or contaminated discriminating content. Through their increased distribution, decision-making algorithms can contribute promoting prejudge and unfairness which is not easy to notice due to lack of transparency. Hence, scientists developed several so-called explanators or explainers which try to point out the connection between input and output to represent in a simplified way the inner structure of machine learning black boxes. In this survey we differ the mechanisms and properties of explaining systems for Deep Neural Networks for Computer Vision tasks. We give a comprehensive overview about taxonomy of related studies and compare several survey papers that deal with explainability in general. We work out the drawbacks and gaps and summarize further research ideas.
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