We propose TANDA, an effective technique for fine-tuning pre-trained Transformer models for natural language tasks. Specifically, we first transfer a pre-trained model into a model for a general task by fine-tuning it with a large and high-quality dataset. We then perform a second fine-tuning step to adapt the transferred model to the target domain. We demonstrate the benefits of our approach for answer sentence selection, which is a well-known inference task in Question Answering. We built a large scale dataset to enable the transfer step, exploiting the Natural Questions dataset. Our approach establishes the state of the art on two well-known benchmarks, WikiQA and TREC-QA, achieving MAP scores of 92% and 94.3%, respectively, which largely outperform the previous highest scores of 83.4% and 87.5%, obtained in very recent work. We empirically show that TANDA generates more stable and robust models reducing the effort required for selecting optimal hyper-parameters. Additionally, we show that the transfer step of TANDA makes the adaptation step more robust to noise. This enables a more effective use of noisy datasets for fine-tuning. Finally, we also confirm the positive impact of TANDA in an industrial setting, using domain specific datasets subject to different types of noise.
TANDA: Transfer and Adapt Pre-Trained Transformer Models for Answer Sentence Selection
TANDA fine-tunes pre-trained Transformers by first adapting them to a general task using a large dataset before further tuning for specific domains, improving performance on benchmarks like WikiQA and TREC-QA.
- Year
- 2019
- Venue
- tanda-transfer-and-adapt-pre-trained-1
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/1911.04118v2ARXIV-DEFAULT
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