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arXiv 提交日期: 2026-03-10
📄 Abstract - Diagnosing and Repairing Citation Failures in Generative Engine Optimization

Generative Engine Optimization (GEO) aims to improve content visibility in AI-generated responses. However, existing methods measure contribution-how much a document influences a response-rather than citation, the mechanism that actually drives traffic back to creators. Also, these methods apply generic rewriting rules uniformly, failing to diagnose why individual document are not cited. This paper introduces a diagnostic approach to GEO that asks why a document fails to be cited and intervenes accordingly. We develop a unified framework comprising: (1) the first taxonomy of citation failure modes spanning different stages of a citation pipeline; (2) AgentGEO, an agentic system that diagnoses failures using this taxonomy, selects targeted repairs from a corresponding tool library, and iterates until citation is achieved; and (3) a document-centric benchmark evaluating whether optimizations generalize across held-out queries. AgentGEO achieves over 40% relative improvement in citation rates while modifying only 5% of content, compared to 25% for baselines. Our analysis reveals that generic optimization can harm long-tail content and some documents face challenges that optimization alone cannot fully address-findings with implications for equitable visibility in AI-mediated information access.

顶级标签: llm agents systems
详细标签: generative engine optimization citation analysis agentic systems content visibility diagnostic framework 或 搜索:

生成式引擎优化中引用失败的诊断与修复 / Diagnosing and Repairing Citation Failures in Generative Engine Optimization


1️⃣ 一句话总结

这篇论文提出了一种新的诊断式方法,通过构建首个引用失败分类体系和一个名为AgentGEO的智能代理系统,来精准识别并修复内容在AI生成回答中不被引用的具体原因,从而在仅修改少量内容的情况下,显著提升引用率并促进信息获取的公平性。

源自 arXiv: 2603.09296