AI RESEARCH
DiffRetriever: Parallel Representative Tokens for Retrieval with Diffusion Language Models
arXiv CS.CL
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ArXi:2605.07210v1 Announce Type: cross PromptReps showed that an autoregressive language model can be used directly as a retriever by prompting it to generate dense and sparse representations of a query or passage. Extending this to multiple representatives is inefficient for autoregressive models, since tokens must be generated sequentially, and prior multi-token variants did not reliably improve over single-token decoding. We show that the bottleneck is sequential generation, not the multi-token idea itself.