Agent Tuning & Optimization 相关度: 8/10

Structural Feature Engineering for Generative Engine Optimization: How Content Structure Shapes Citation Behavior

Junwei Yu, Mufeng Yang, Yepeng Ding, Hiroyuki Sato
arXiv: 2603.29979v1 发布: 2026-03-31 更新: 2026-03-31

AI 摘要

研究内容结构对生成式引擎优化效果的影响,提出GEO-SFE框架提升内容可见性。

主要贡献

  • 提出GEO-SFE框架,分解内容结构为三个层级
  • 开发架构感知的优化策略和预测模型
  • 实验证明框架可提升引用率和主观质量

方法论

通过将内容结构分解为宏观、中观和微观三个层级,建模其对不同生成式引擎架构的引用概率的影响,并进行实验验证。

原文摘要

The proliferation of AI-powered search engines has shifted information discovery from traditional link-based retrieval to direct answer generation with selective source citation, creating new challenges for content visibility. While existing Generative Engine Optimization (GEO) approaches focus primarily on semantic content modification, the role of structural features in influencing citation behavior remains underexplored. In this paper, we propose GEO-SFE, a systematic framework for structural feature engineering in generative engine optimization. Our approach decomposes content structure into three hierarchical levels: macro-structure (document architecture), meso-structure (information chunking), and micro-structure (visual emphasis), and models their impact on citation probability across different generative engine architectures. We develop architecture-aware optimization strategies and predictive models that preserve semantic integrity while improving structural effectiveness. Experimental evaluation across six mainstream generative engines demonstrates consistent improvements in citation rate (17.3 percent) and subjective quality (18.5 percent), validating the effectiveness and generalizability of the proposed framework. This work establishes structural optimization as a foundational component of GEO, providing a data-driven methodology for enhancing content visibility in LLM-powered information ecosystems.

标签

Generative Engine Optimization Content Structure Citation Behavior

arXiv 分类

cs.CL cs.HC cs.IR