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Interpretable Deep Learning: Interpretation, Interpretability, Trustworthiness, and Beyond

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arxiv 2103.10689 v3 pith:QFPRJYXM submitted 2021-03-19 cs.LG

Interpretable Deep Learning: Interpretation, Interpretability, Trustworthiness, and Beyond

classification cs.LG
keywords interpretationdeepalgorithmsinterpretationsmodelsinterpretabilitylearningbeen
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deep neural networks have been well-known for their superb handling of various machine learning and artificial intelligence tasks. However, due to their over-parameterized black-box nature, it is often difficult to understand the prediction results of deep models. In recent years, many interpretation tools have been proposed to explain or reveal how deep models make decisions. In this paper, we review this line of research and try to make a comprehensive survey. Specifically, we first introduce and clarify two basic concepts -- interpretations and interpretability -- that people usually get confused about. To address the research efforts in interpretations, we elaborate the designs of a number of interpretation algorithms, from different perspectives, by proposing a new taxonomy. Then, to understand the interpretation results, we also survey the performance metrics for evaluating interpretation algorithms. Further, we summarize the current works in evaluating models' interpretability using "trustworthy" interpretation algorithms. Finally, we review and discuss the connections between deep models' interpretations and other factors, such as adversarial robustness and learning from interpretations, and we introduce several open-source libraries for interpretation algorithms and evaluation approaches.

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