Bao-Sinh Nguyen
2022
Make The Most of Prior Data: A Solution for Interactive Text Summarization with Preference Feedback
Duy-Hung Nguyen
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Nguyen Viet Dung Nghiem
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Bao-Sinh Nguyen
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Dung Tien Tien Le
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Shahab Sabahi
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Minh-Tien Nguyen
|
Hung Le
Findings of the Association for Computational Linguistics: NAACL 2022
For summarization, human preferences is critical to tame outputs of the summarizer in favor of human interests, as ground-truth summaries are scarce and ambiguous. Practical settings require dynamic exchanges between humans and AI agents wherein feedback is provided in an online manner, a few at a time. In this paper, we introduce a new framework to train summarization models with preference feedback interactively. By properly leveraging offline data and a novel reward model, we improve the performance regarding ROUGE scores and sample-efficiency. Our experiments on three various datasets confirm the benefit of the proposed framework in active, few-shot and online settings of preference learning.
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Co-authors
- Duy-Hung Nguyen 1
- Nguyen Viet Dung Nghiem 1
- Dung Tien Tien Le 1
- Shahab Sabahi 1
- Minh-Tien Nguyen 1
- show all...
- Hung Le 1