Reference

Glossary

Key terms in AI visibility, GEO (Generative Engine Optimization), and LLM-powered search — defined and maintained by the AI Visibility Barometer.

20 terms · Last updated Q2 2026


GEO — Generative Engine Optimization

The practice of optimising a company's content and digital presence to be cited by LLM-powered search engines (ChatGPT, Perplexity, Gemini, Claude). GEO is distinct from SEO: the target is a citation in a generated answer, not a position in a ranked list of links.

# geo

AEO — Answer Engine Optimization

A broader term for optimising content so that AI-powered answer engines surface it in direct responses. Often used interchangeably with GEO. AEO emphasises the shift from search engines (returning links) to answer engines (returning synthesised answers).

# aeo

AI Visibility

The degree to which a company, brand, or product is cited, mentioned, or recommended by LLM-powered search engines when users ask relevant category queries. High AI visibility means the company appears consistently across multiple LLMs and prompts.

# ai-visibility

AI Visibility Score

A composite metric (0–100) measuring AI visibility. In the AI Visibility Barometer, it is calculated as: citation presence rate (50%) + average rank score (30%) + share of voice (20%). The score is reproducible and methodology-first.

# ai-visibility-score

LLM Citation

An instance where a large language model names, recommends, or references a specific company, product, or source in a generated response. LLM citations drive direct brand discovery — users receive a recommendation without clicking a search result.

# llm-citation

Citation Presence Rate

The share of (LLM × prompt) combinations in which a company is cited at least once. A citation presence rate of 60% means the company appears in 60% of tested LLM-prompt pairs. Used as the primary weight (50%) in the AI Visibility Score.

# citation-presence-rate

Share of Voice (AI)

A company's citations as a proportion of all citations generated across its competitive set, for a given LLM and prompt set. AI share of voice measures relative prominence in LLM responses, analogous to share of voice in traditional media monitoring.

# share-of-voice-ai

RAG — Retrieval-Augmented Generation

An LLM architecture where the model retrieves external documents or web content at query time before generating a response. RAG-based systems (including Perplexity and ChatGPT with browsing) are more sensitive to real-time content signals than pure generative models.

# rag

AI Overviews (Google)

Google's LLM-generated summaries displayed at the top of search results pages, replacing or supplementing traditional blue links for many queries. AI Overviews draw from indexed web content and are a distinct channel from conversational LLMs — but share GEO principles.

# ai-overviews

LLM — Large Language Model

A neural network trained on large text datasets to generate and understand natural language. Examples: GPT-4o (OpenAI), Gemini (Google), Claude (Anthropic). LLMs power both conversational AI tools and AI-powered search engines.

# llm

Zero-click Search

A search interaction where the user receives their answer directly in the search interface — without clicking through to a website. LLM-powered search dramatically increases zero-click rates, making AI visibility (rather than web traffic) the key commercial metric.

# zero-click

Structured Data / Schema.org

Machine-readable metadata embedded in web pages using vocabulary from schema.org. Key schemas for AI visibility include FAQPage, DefinedTermSet, Dataset, Article, and Organization. Structured data helps LLMs identify, interpret, and cite content accurately.

# structured-data

llms.txt

A plain-text file placed at the root of a website (e.g. /llms.txt) listing the site's pages with short descriptions, intended for LLM crawlers. Analogous to robots.txt for AI bots. Adopted as an emerging standard by GEO practitioners.

# llms-txt

FAQPage Schema

A schema.org markup type that structures question-and-answer content in a machine-readable format. FAQPage schema is one of the strongest GEO signals: LLMs frequently extract and cite Q&A content marked up with this schema in their generated responses.

# faqpage-schema

Topical Authority

The degree to which a website or publisher is recognised by LLMs and search engines as a credible, comprehensive source on a given topic. High topical authority increases the probability of LLM citation. It is built through consistent, expert, well-sourced content on a focused subject area.

# topical-authority

Entity Recognition (LLM)

The ability of an LLM to identify and consistently reference a company, person, or product as a distinct entity. Strong entity recognition — built through consistent naming, structured data, and cross-source corroboration — increases citation frequency and accuracy.

# entity-recognition

Citation Rank

The position at which a company is cited within an LLM response. Position 1 (first mention) carries the highest visibility and recall. The AI Visibility Barometer uses average citation rank as a 30% weight in the AI Visibility Score.

# citation-rank

GEO vs SEO

SEO (Search Engine Optimisation) targets ranked positions in traditional search results pages (Google, Bing). GEO (Generative Engine Optimisation) targets citations in LLM-generated answers. The two disciplines share technical foundations (structured data, content quality) but differ in measurement, distribution, and conversion mechanics.

# geoai-vs-seo
Cite as: AI Visibility Barometer — Glossary (2026), aivisibilitybarometer.com/glossary