We investigate the capability of a transformer pretrained on natural language to generalize to other modalities with minimal finetuning -- in particular, without finetuning of the self-attention and feedforward layers of the residual blocks. We consider such a model, which we call a Frozen Pretrained Transformer (FPT), and study finetuning it on a variety of sequence classification tasks spanning numerical computation, vision, and protein fold prediction. In contrast to prior works which investigate finetuning on the same modality as the pretraining dataset, we show that pretraining on natural language can improve performance and compute efficiency on non-language downstream tasks. Additionally, we perform an analysis of the architecture, comparing the performance of a random initialized transformer to a random LSTM. Combining the two insights, we find language-pretrained transformers can obtain strong performance on a variety of non-language tasks.
Pretrained Transformers as Universal Computation Engines
Pretrained language transformers can generalize to non-language tasks with minimal finetuning, outperforming random initialized transformers and LSTMs.
- Year
- 2021
- Venue
- arXiv 2021
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2103.05247v2ARXIV-DEFAULT
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