Conference item
Quantifying learnability and describability of visual concepts emerging in representation learning
- Abstract:
- The increasing impact of black box models, and particularly of unsupervised ones, comes with an increasing interest in tools to understand and interpret them. In this paper, we consider in particular how to characterise visual groupings discovered automatically by deep neural networks, starting with state-of-the-art clustering methods. In some cases, clusters readily correspond to an existing labelled dataset. However, often they do not, yet they still maintain an "intuitive interpretability''. We introduce two concepts, visual learnability and describability, that can be used to quantify the interpretability of arbitrary image groupings, including unsupervised ones. The idea is to measure (1) how well humans can learn to reproduce a grouping by measuring their ability to generalise from a small set of visual examples (learnability) and (2) whether the set of visual examples can be replaced by a succinct, textual description (describability). By assessing human annotators as classifiers, we remove the subjective quality of existing evaluation metrics. For better scalability, we finally propose a class-level captioning system to generate descriptions for visual groupings automatically and compare it to human annotators using the describability metric.
- Publication status:
- Published
- Peer review status:
- Peer reviewed
Actions
Authors
+ European Research Council
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- Funder identifier:
- https://ror.org/0472cxd90
- Funding agency for:
- Laina, I
- Grant:
- 638009
+ Engineering and Physical Sciences Research Council
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- Funder identifier:
- https://ror.org/0439y7842
- Funding agency for:
- Laina, I
- Grant:
- EP/M013774/1
+ Open Philanthropy Project
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- Funder identifier:
- https://ror.org/004d1k391
- Funding agency for:
- Fong, RC
- Publisher:
- Curran Associates
- Host title:
- Advances in Neural Information Processing Systems 33
- Volume:
- 16
- Pages:
- 13112-13126
- Publication date:
- 2021-07-01
- Acceptance date:
- 2020-09-25
- Event title:
- 34th Annual Conference on Neural Information Processing Systems (NeurIPS 2020)
- Event location:
- Virtual event
- Event website:
- https://nips.cc/Conferences/2020
- Event start date:
- 2020-12-06
- Event end date:
- 2020-12-12
- ISSN:
-
1049-5258
- ISBN:
- 9781713829546
- Language:
-
English
- Pubs id:
-
1145377
- Local pid:
-
pubs:1145377
- Deposit date:
-
2020-11-13
Terms of use
- Copyright holder:
- Laina et al. and NeurIPS
- Copyright date:
- 2020
- Rights statement:
- © (2020) by individual authors and Neural Information Processing Systems Foundation Inc. All rights reserved.
- Notes:
- This is the accepted manuscript version of the paper. The final version is available online from Curran Associates at: https://www.proceedings.com/59066.html
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