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AttentionRetriever: Attention Layers are Secretly Long Document Retrievers

Published 12 Feb 2026 in cs.IR and cs.AI | (2602.12278v1)

Abstract: Retrieval augmented generation (RAG) has been widely adopted to help LLMs to process tasks involving long documents. However, existing retrieval models are not designed for long document retrieval and fail to address several key challenges of long document retrieval, including context-awareness, causal dependence, and scope of retrieval. In this paper, we proposed AttentionRetriever, a novel long document retrieval model that leverages attention mechanism and entity-based retrieval to build context-aware embeddings for long document and determine the scope of retrieval. With extensive experiments, we found AttentionRetriever is able to outperform existing retrieval models on long document retrieval datasets by a large margin while remaining as efficient as dense retrieval models.

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