IRAIAug 15, 2025

Role-Augmented Intent-Driven Generative Search Engine Optimization

arXiv:2508.11158v14 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses a critical challenge for content creators in adapting SEO practices to generative search engines, representing an incremental advancement in domain-specific optimization.

The paper tackles the problem of content creators' diminished visibility in generative search engines (GSEs) due to misaligned optimization strategies, proposing a role-augmented intent-driven method that yields significant improvements in both subjective impressions and objective content visibility.

Generative Search Engines (GSEs), powered by Large Language Models (LLMs) and Retrieval-Augmented Generation (RAG), are reshaping information retrieval. While commercial systems (e.g., BingChat, Perplexity.ai) demonstrate impressive semantic synthesis capabilities, their black-box nature fundamentally undermines established Search Engine Optimization (SEO) practices. Content creators face a critical challenge: their optimization strategies, effective in traditional search engines, are misaligned with generative retrieval contexts, resulting in diminished visibility. To bridge this gap, we propose a Role-Augmented Intent-Driven Generative Search Engine Optimization (G-SEO) method, providing a structured optimization pathway tailored for GSE scenarios. Our method models search intent through reflective refinement across diverse informational roles, enabling targeted content enhancement. To better evaluate the method under realistic settings, we address the benchmarking limitations of prior work by: (1) extending the GEO dataset with diversified query variations reflecting real-world search scenarios and (2) introducing G-Eval 2.0, a 6-level LLM-augmented evaluation rubric for fine-grained human-aligned assessment. Experimental results demonstrate that search intent serves as an effective signal for guiding content optimization, yielding significant improvements over single-aspect baseline approaches in both subjective impressions and objective content visibility within GSE responses.

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