Nonparametric Decoding for Generative Retrieval

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The generative retrieval model depends solely on the information encoded in its model parameters without external memory, its information capacity is limited and fixed. To overcome the limitation, we propose Nonparametric Decoding (Np Decoding) which can be applied to existing generative retrieval models. Np Decoding uses nonparametric contextualized vocab embeddings (external memory) rather than vanilla vocab embeddings as decoder vocab embeddings. By leveraging the contextualized vocab embeddings, the generative retrieval model is able to utilize both the parametric and nonparametric space. Evaluation over 9 datasets (8 single-hop and 1 multi-hop) in the document retrieval task shows that applying Np Decoding to generative retrieval models significantly improves the performance. We also show that Np Decoding is data- and parameter-efficient, and shows high performance in the zero-shot setting.
Publisher
Association for Computational Linguistics (ACL)
Issue Date
2023-07
Language
English
Citation

ACL 2023, pp.12642 - 12661

URI
http://hdl.handle.net/10203/316302
Appears in Collection
AI-Conference Papers(학술대회논문)
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