Concept-based explanations have emerged as a popular way of extracting human-interpretable representations from deep discriminative models. At the same time, the disentanglement learning literature has focused on extracting similar representations in an unsupervised or weakly-supervised way, using deep generative models. Despite the overlapping goals and potential synergies, to our knowledge, there has not yet been a systematic comparison of the limitations and trade-offs between concept-based explanations and disentanglement approaches. In this paper, we give an overview of these fields, comparing and contrasting their properties and behaviours on a diverse set of tasks, and highlighting their potential strengths and limitations. In particular, we demonstrate that state-of-the-art approaches from both classes can be data inefficient, sensitive to the specific nature of the classification/regression task, or sensitive to the employed concept representation.
Is Disentanglement all you need? Comparing Concept-based & Disentanglement Approaches
The paper compares concept-based explanations and disentanglement approaches in deep learning, highlighting their strengths and limitations across various tasks.
- Year
- 2021
- Venue
- arXiv 2021
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- 6
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- arxiv.org/abs/2104.06917ARXIV-DEFAULT
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