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Concept-based interpretations of black-box models are often more intuitive for humans to understand. The most widely adopted approach for concept-based interpretation is Concept Activation Vector (CAV). CAV relies on learning a linear relation between some latent representation of a given model and concepts. The linear separability is usually implicitly assumed but does not hold true in general. In this work, we started from the original intent of concept-based interpretation and proposed Concept Gradient (CG), extending concept-based interpretation beyond linear concept functions. We showed that for a general (potentially non-linear) concept, we can mathematically evaluate how a small change of concept affecting the model’s prediction, which leads to an extension of gradient-based interpretation to the concept space. We demonstrated empirically that CG outperforms CAV in both toy examples and real world datasets.more » « less
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Bai, Andrew; Yeh, Chih-Kuan; Ravikumar, Pradeep; Lin, Y. C.; Hsieh, Cho-Jui. (, International Conference on Learning Representation)
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Yeh, Chih-Kuan; Kim, Been; Ravikumar, Pradeep (, Frontiers in artificial intelligence and applications)Hitzler, Pascal; Sarker, Md Kamruzzaman (Ed.)Understanding complex machine learning models such as deep neural networks with explanations is crucial in various applications. Many explanations stem from the model perspective, and may not necessarily effectively communicate why the model is making its predictions at the right level of abstraction. For example, providing importance weights to individual pixels in an image can only express which parts of that particular image are important to the model, but humans may prefer an explanation which explains the prediction by concept-based thinking. In this work, we review the emerging area of concept based explanations. We start by introducing concept explanations including the class of Concept Activation Vectors (CAV) which characterize concepts using vectors in appropriate spaces of neural activations, and discuss different properties of useful concepts, and approaches to measure the usefulness of concept vectors. We then discuss approaches to automatically extract concepts, and approaches to address some of their caveats. Finally, we discuss some case studies that showcase the utility of such concept-based explanations in synthetic settings and real world applications.more » « less
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Hsieh, Cheng-Yu; Yeh, Chih-Kuan; Liu, Xuanqing; Ravikumar, Pradeep; Kim, Seungyeon; Kumar, Sanjiv; Hsieh, Cho-Jui (, International Conference on Learning Representation (ICLR))
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