Papers
arxiv:2510.11438

What Generative Search Engines Like and How to Optimize Web Content Cooperatively

Published on Oct 13
· Submitted by Shanshan Zhong on Oct 16
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Abstract

AutoGEO, a framework for optimizing generative engines, learns and applies preference rules to enhance content traction and search utility using large language models.

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By employing large language models (LLMs) to retrieve documents and generate natural language responses, Generative Engines, such as Google AI overview and ChatGPT, provide significantly enhanced user experiences and have rapidly become the new form of search. Their rapid adoption also drives the needs of Generative Engine Optimization (GEO), as content providers are eager to gain more traction from them. In this paper, we introduce AutoGEO, a framework to automatically learn generative engine preferences when using retrieved contents for response generation, and rewrite web contents for more such traction. AutoGEO first prompts frontier LLMs to explain generative engine preferences and extract meaningful preference rules from these explanations. Then it uses preference rules as context engineering for AutoGEO_API, a prompt-based GEO system, and as rule-based rewards to train AutoGEO_Mini, a cost-effective GEO model. Experiments on the standard GEO-Bench and two newly constructed benchmarks using real user queries demonstrate the effectiveness of AutoGEO in enhancing content traction while preserving search utility. Analyses confirm the learned rules' robustness and abilities to capture unique preferences in variant domains, and AutoGEO systems' ability to embed them in content optimization. The code is released at https://github.com/cxcscmu/AutoGEO.

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TL;DR: AutoGEO is a framework to automatically learn generative engine preferences and rewrite web content for more traction.

Paper: https://arxiv.org/pdf/2510.11438
Code: https://github.com/cxcscmu/AutoGEO

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