Retrieval-augmented models have proven to be effective in natural language processing tasks, yet there remains a lack of research on their optimization using variational inference. We introduce the Variational Open-Domain (VOD) framework for end-to-end training and evaluation of retrieval-augmented models, focusing on open-domain question answering and language modelling. The VOD objective, a self-normalized estimate of the R'enyi variational bound, approximates the task marginal likelihood and is evaluated under samples drawn from an auxiliary sampling distribution (cached retriever and/or approximate posterior). It remains tractable, even for retriever distributions defined on large corpora. We demonstrate VOD's versatility by training reader-retriever BERT-sized models on multiple-choice medical exam questions. On the MedMCQA dataset, we outperform the domain-tuned Med-PaLM by +5.3% despite using 2.500$\times$ fewer parameters. Our retrieval-augmented BioLinkBERT model scored 62.9% on the MedMCQA and 55.0% on the MedQA-USMLE. Last, we show the effectiveness of our learned retriever component in the context of medical semantic search.
Variational Open-Domain Question Answering
The Variational Open-Domain (VOD) framework optimizes retrieval-augmented models using variational inference for end-to-end training and evaluation, demonstrating superior performance on medical question answering tasks with fewer parameters.
- Year
- 2022
- Venue
- arXiv 2022
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2210.06345v2ARXIV-DEFAULT
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