We introduce a frustratingly simple, super efficient and surprisingly effective decoding method, which we call Frustratingly Simple Decoding (FSD), for neural text generation. The idea behind FSD is straightforward: we build an anti-LM based on previously generated text and use this anti-LM to penalize future generation of what has been generated. The anti-LM can be implemented as simple as an n-gram language model or a vectorized variant. In this way, FSD introduces no extra model parameters and negligible computational overhead (FSD can be as fast as greedy search). Despite the simplicity, FSD is surprisingly effective; Experiments show that FSD can outperform the canonical methods to date (i.e., nucleus sampling) as well as several strong baselines that were proposed recently.
A Frustratingly Simple Decoding Method for Neural Text Generation
Frustratingly Simple Decoding, an efficient decoding method for neural text generation, uses an anti-language model to penalize repetitive generation without additional parameters or significant computational cost.
- Year
- 2023
- Venue
- arXiv 2023
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- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2305.12675v2ARXIV-DEFAULT
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