NAIL: Lexical Retrieval Indices with Efficient Non-Autoregressive Decoders
Livio Soares,
Daniel Gillick,
Jeremy Cole
et al.
Abstract:Neural document rerankers are extremely effective in terms of accuracy. However, the best models require dedicated hardware for serving, which is costly and often not feasible. To avoid this serving-time requirement, we present a method of capturing up to 86% of the gains of a Transformer cross-attention model with a lexicalized scoring function that only requires 10 −6 % of the Transformer's FLOPs per document and can be served using commodity CPUs. When combined with a BM25 retriever, this approach matches t… Show more
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