We reformulate the problem of supervised learning as learning to learn with two nested loops (i.e. learning problems). The inner loop learns on each individual instance with self-supervision before final prediction. The outer loop learns the self-supervised task used by the inner loop, such that its final prediction improves. Our inner loop turns out to be equivalent to linear attention when the inner-loop learner is only a linear model, and to self-attention when it is a kernel estimator. For practical comparison with linear or self-attention layers, we replace each of them in a transformer with an inner loop, so our outer loop is equivalent to training the architecture. When each inner-loop learner is a neural network, our approach vastly outperforms transformers with linear attention on ImageNet from 224 x 224 raw pixels in both accuracy and FLOPs, while (regular) transformers cannot run.
Learning to (Learn at Test Time)
The proposed method reformulates supervised learning into a nested loop approach, with the inner loop using self-supervision and the outer loop optimizing the self-supervised task for better predictions, outperforming transformers with linear attention on ImageNet.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 9
- Hosting
- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2310.13807v2ARXIV-DEFAULT
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