AI Search Citation Network
An AI search citation network is the set of domains, publishers, retailers, social platforms, and brand-owned sites that a generative search engine repeatedly cites for a topic, vertical, language, or query class.
Key points
- The GEO paper measures cited domains across engines and finds that different AI systems often consult substantially different domain sets for the same intent [src-028].
- In automotive and consumer-electronics experiments, each engine contributed many exclusive domains, while only a small core of high-authority review and media sites appeared across all engines [src-028].
- Local service queries were especially fragmented: Claude and GPT used narrower source sets, while Gemini and Perplexity surfaced broader domain pools with limited consensus [src-028].
- The paper’s proposed GEO operating model starts with continuous engine-specific competitive intelligence: mapping which sources each AI engine privileges for target queries [src-028].
- Citation-network monitoring links strategy to execution: identify target earned-media sources, build content for the evidence base, and track whether visibility shifts across engines over time [src-028].
Related entities
Related concepts
- Generative Engine Optimization
- AI Search
- Earned Media Bias in AI Search
- Machine-Scannable Content
- AI Search Language Sensitivity
- AI Search Paraphrase Sensitivity
- Big Brand Bias in AI Search
Source references
- [src-028] Mahe Chen, Xiaoxuan Wang, Kaiwen Chen, Nick Koudas — “Generative Engine Optimization: How to Dominate AI Search” (2025-09-10)