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Evaluation of Attribution Bias in Generator-Aware Retrieval-Augmented Large Language Models

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arxiv 2410.12380 v2 pith:ILXPBPLD submitted 2024-10-16 cs.CL

Evaluation of Attribution Bias in Generator-Aware Retrieval-Augmented Large Language Models

classification cs.CL
keywords attributionllmsbiasdocumentssourceanswersauthorshipevaluation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Attributing answers to source documents is an approach used to enhance the verifiability of a model's output in retrieval augmented generation (RAG). Prior work has mainly focused on improving and evaluating the attribution quality of large language models (LLMs) in RAG, but this may come at the expense of inducing biases in the attribution of answers. We define and examine two aspects in the evaluation of LLMs in RAG pipelines, namely attribution sensitivity and bias with respect to authorship information. We explicitly inform an LLM about the authors of source documents, instruct it to attribute its answers, and analyze (i) how sensitive the LLM's output is to the author of source documents, and (ii) whether the LLM exhibits a bias towards human-written or AI-generated source documents. We design an experimental setup in which we use counterfactual evaluation to study three LLMs in terms of their attribution sensitivity and bias in RAG pipelines. Our results show that adding authorship information to source documents can significantly change the attribution quality of LLMs by 3% to 18%. Moreover, we show that LLMs can have an attribution bias towards explicit human authorship, which can serve as a competing hypothesis for findings of prior work that shows that LLM-generated content may be preferred over human-written contents. Our findings indicate that metadata of source documents can influence LLMs' trust, and how they attribute their answers. Furthermore, our research highlights attribution bias and sensitivity as a novel aspect of brittleness in LLMs.

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    Clinical RAG can attribute real evidence about drug Y to queried drug X at high rates under adversarial retrieval, a failure invisible to faithfulness and citation metrics but detectable by entity-attribution verification.