cs.AI updates on arXiv.org 07月23日 12:03
Cross-Encoder Rediscovers a Semantic Variant of BM25
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本文研究MiniLM交叉编码器在信息检索任务中的表现,发现其采用语义化的BM25机制,通过注意力机制和低秩矩阵增强语义捕捉,为模型透明性和应用扩展奠定基础。

arXiv:2502.04645v2 Announce Type: replace-cross Abstract: Neural Ranking Models (NRMs) have rapidly advanced state-of-the-art performance on information retrieval tasks. In this work, we investigate a Cross-Encoder variant of MiniLM to determine which relevance features it computes and where they are stored. We find that it employs a semantic variant of the traditional BM25 in an interpretable manner, featuring localized components: (1) Transformer attention heads that compute soft term frequency while controlling for term saturation and document length effects, and (2) a low-rank component of its embedding matrix that encodes inverse document frequency information for the vocabulary. This suggests that the Cross-Encoder uses the same fundamental mechanisms as BM25, but further leverages their capacity to capture semantics for improved retrieval performance. The granular understanding lays the groundwork for model editing to enhance model transparency, addressing safety concerns, and improving scalability in training and real-world applications.

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MiniLM 交叉编码器 信息检索 语义BM25 模型透明性
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