Saved in:
Bibliographic Details
Main Authors: Tian, Zhihua, Chen, Yuhan, Tang, Yao, Liu, Jian, Jia, Ruoxi
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.09296
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915849902751744
author Tian, Zhihua
Chen, Yuhan
Tang, Yao
Liu, Jian
Jia, Ruoxi
author_facet Tian, Zhihua
Chen, Yuhan
Tang, Yao
Liu, Jian
Jia, Ruoxi
contents 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.
format Preprint
id arxiv_https___arxiv_org_abs_2603_09296
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Diagnosing and Repairing Citation Failures in Generative Engine Optimization
Tian, Zhihua
Chen, Yuhan
Tang, Yao
Liu, Jian
Jia, Ruoxi
Information Retrieval
Computation and Language
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.
title Diagnosing and Repairing Citation Failures in Generative Engine Optimization
topic Information Retrieval
Computation and Language
url https://arxiv.org/abs/2603.09296