SEO

100 Most Cited Domains in Google’s AI Mode

AI Mode citation domains

This 2025 trend analysis examines who gets cited inside Google’s conversational layer and why that matters for discoverability in India and beyond.

The report tallies top citation leaders: Wikipedia (1,135,007 mentions, 11.22%), YouTube (961,938; 9.51%), blog.google (601,835; 5.95%), Reddit (588,596; 5.82%), and Google.com (568,774; 5.62%).

Mentions and citations still build brand presence inside answers even as clicks fall. A name in a reply can end the user journey, so visibility within replies affects awareness more than referral traffic alone.

Concentration is steep: the top five capture 38.13% of all citations, top ten 53.87%, and top twenty 66.18%. This shows a winner-takes-most gradient for major platforms and Google-owned properties.

We focus on domains, not single pages, to help marketers prioritize partnerships, format choices, and distribution strategy. Later sections analyze a September 2025 volatility event, platform personalities, and practical monitoring steps.

Key Takeaways

  • The top five sites account for over 38% of mentions, concentrating visibility.
  • Major platforms and Google-owned properties get elevated exposure in search replies.
  • Mentions inside answers build brand presence even when click-through drops.
  • This report interprets 100 most cited domains to guide publisher strategy.
  • Expect later sections on a September 2025 volatility event and optimization tips.

Why Google’s AI Mode citations matter for search visibility in 2025

The shift to answer-first experiences means many users see a concise summary before they click. This change alters what counts as visibility and how marketers judge success.

From search engine to answer engine and the rise of zero-click behavior

Overviews expanded from 6.49% of searches in January 2025 to over 50% by October. That growth reduces downstream traffic because summaries satisfy intent on the results page.

What a citation signals about authority, trust, and source preference

A cited source acts as a visible trust cue. Even when users do not click, repeated mentions shape brand recall and perceived authority.

Metric 2024 May 2025
Zero-click rate 56% 69%
Searches with overviews 6.49% (Jan 2025) 50%+ (Oct 2025)
CTR change for #1 result -34.5% (Ahrefs)

Practical baseline: understand which sources win mentions, why they are chosen, and how that affects visibility planning for Indian publishers and marketers.

How this report measured AI citations across engines and time

We describe the sampling, snapshot cadence, and counting rules used to quantify source mentions over time.

Dataset scope: the study sampled 230,000 prompts across three conversational engines and captured 13 weekly snapshots from July 14 to Oct 12, 2025. The raw collection yielded over 100 million total citations.

Method and measurement

The unit of measurement was a citation appearing inside a response. Each instance was logged and then aggregated by domain to show recurring sources.

Why compare multiple platforms? Different engines use distinct retrieval systems, policies, and ranking signals. Comparing platforms reveals how source share shifts with those differences.

  • Weekly snapshots capture volatility rather than a single-day snapshot.
  • Top cited domains means the sites most frequently included as sources in responses.
  • Share equals the proportion of responses containing a citation from a given site.
Metric Value Notes
Prompts sampled 230,000 Large-scale prompt sampling
Weekly snapshots 13 Jul 14 — Oct 12, 2025
Total citations logged 100,000,000+ Aggregated across engines
Unique sites (Perplexity) 8,027 Higher domain diversity
Unique sites (ChatGPT Search) 2,127 More concentrated

Interpretation guidance: the data shows patterns and correlation, but not direct causation. Platform-level diversity affects opportunity for smaller publishers. For Indian marketers, time-series tracking helps spot temporary boosts or sudden drops caused by tuning, filtering, or retrieval changes.

AI Mode citation domains: the 100 most cited domains and what the leaders reveal

A compact map of the 100 most cited sites reveals which sources shape answers across many queries.

What the top 100 represents: a practical guide to the sites most likely to be selected as sources inside reply text. For Indian publishers, this list is a useable map of where visibility tends to cluster.

The concentration effect: a very small set captures a large share. The top five account for 38.13% of mentions, the top ten 53.87%, and the top twenty 66.18%. That skew changes strategy: broad reach matters less than being reference-ready.

The leaders share common advantages: well-structured reference pages, huge user-generated archives, and strong brand signals that act as trust shortcuts. Wikipedia, YouTube, blog.google, Reddit, and Google.com top the list by sheer share and repeat mentions.

A visually striking infographic design depicting "AI Mode citation domains," featuring an intricate collage of the top 100 most cited domains. In the foreground, a vibrant array of domain logos and symbols neatly organized in a circular layout, highlighting their significance in AI research. The middle layer showcases interconnected lines and light paths representing data flow and citation relationships among these domains. The background features a soft-focus city skyline at dusk, with warm, ambient lighting that creates a futuristic atmosphere. Incorporate a clear, appealing color palette emphasizing blues and whites. The overall mood should be professional and informative, capturing the essence of innovation in the AI field. No text or logos should detract from the visual impact.

Rank Group Share Notable leaders
Top 5 38.13% Wikipedia, YouTube, blog.google, Reddit, Google.com
Top 10 53.87% Includes LinkedIn and other major platforms
Top 20 66.18% Broad mix of structured references and UGC sites
  • Why they win: scalable coverage, clear structure, and formats models can summarize easily.
  • Recurring patterns: reference entries, video libraries, high-volume forums, and professional networks.
  • Practical lens: copy attributes that fit your niche—structured data, consistent quality, and visible branding beat blind imitation.

Google’s owned-and-operated advantage inside AI Mode and AI Overviews

Google’s family of properties now appears as a repeat reference inside many overviews. That pattern changes which pages get follow-up attention after a user reads a short answer.

Scale of the effect: YouTube, blog.google, Google.com and other Google properties account for 2,306,551 mentions, or 22.81% of the total in the study. Separately, 43% of overviews include links that send users back to Google-controlled sources such as support.google.com, play.google.com, and YouTube.

Self-referential patterns

This self-reference has practical consequences. Even when a third-party page is the best match, the engine layer often nudges users toward Google properties for deeper info or follow-ups.

“A persistent preference for owned sources shifts attention and reduces outbound clicks.”

How this reshapes competition

  • Owned citations raise the bar for independent websites to earn visible mentions.
  • Search economics shift: fewer outbound clicks, more retained attention, and reinforced product use.
  • Publishers should treat YouTube and blog.google as distribution channels as well as competitors.
Metric Value Implication
Google ecosystem share 2,306,551 (22.81%) Large structural advantage in overviews
Overviews linking back to Google 43% Frequent self-referential follow-ups
Publisher action Prioritize platform use Use YouTube and Google formats for distribution

Next step: monitor how tuning and retrieval changes shift these shares. Even dominant preference can vary fast, so weekly tracking matters for India-focused publishers.

Citation volatility trends and the September 2025 inflection point

A sharp mid-September shift exposed how quickly citation patterns can flip across conversational systems.

What changed: ChatGPT reduced mentions of Reddit and Wikipedia in mid-September 2025. Reddit fell from ~60% of responses in early August to ~10% by mid-September. Wikipedia fell from ~55% to under 20% on ChatGPT.

The num=100 theory: some observers linked the change to Google removing the num=100 parameter around Sept 11. That could limit access to deeper search results, but correlation is not causation.

Why that theory may not fully explain the shift

Sergei Rogulin of Semrush noted only ~34% of Reddit’s ranking keywords are in positions 21–100. The distribution suggests de-biasing or source filtering is a more plausible cause than a single parameter change.

Metric ChatGPT AI Mode Perplexity
Wikipedia mentions 55% → <20% ~3% ~0.8%
Reddit mentions ~60% → ~10% stable/up slight down
Post-shift winners PRnewswire, Forbes, Medium YouTube, Reddit, Facebook up Forbes, Microsoft slight up

Interpretation: platforms can tune retrieval and filters quickly. For Indian marketers this means monitor citation patterns over time and diversify where you seek visibility.

Platform-by-platform citation patterns and “engine personalities”

Each engine develops a predictable sourcing personality that affects which sources win visibility. That personality shapes how balanced or concentrated the share of references becomes across the platforms publishers care about.

Google mode: balanced sourcing and steady mix

Google mode shows a stable mix. Weekly sampling found recurring sources like LinkedIn, YouTube, Reddit, and Google Blog. This platform favors a broad pool and less volatile shifts than some competitors.

ChatGPT: concentrated sources and bigger swings

ChatGPT leans on fewer sources and reacts faster to tuning events. The September 2025 swing showed how quickly its share can re-weight toward new winners. Brand mentions in commerce prompts were especially concentrated (BrightEdge: ~99.3% of eCommerce responses).

Perplexity: diversity and transparency

Perplexity cited 8,027 unique domains in the study, the highest among platforms. It offers richer citation detail and a wider pool of sources, which helps niche publishers earn occasional visibility.

Overviews vs interactive mode

Overviews on search results pages handle intent differently from the interactive flow inside a conversational mode. Overviews skew more toward video links (YouTube accounted for 62.4% in some cuts) while interactive sessions may surface a broader set of supporting sources.

  • Define engine personalities as consistent platform behaviors that shape source mix.
  • Plan for platform differences rather than a single playbook.
  • Practical takeaway: prioritize platforms with higher transparency when trust and verification matter, while keeping presence in Google mode for scale.

Platform Characteristic Notable metric
Google mode Balanced, stable LinkedIn/YouTube/Reddit recurring
ChatGPT Concentrated, volatile 2,127 unique domains (more concentrated)
Perplexity Diverse, transparent 8,027 unique domains (most diverse)

Brand mentions, domains, and content types that earn citations in AI responses

Purchase-intent queries — words like “best,” “budget,” “compare,” and “deals” — routinely prompt brand lists and product calls in short answers.

When brands appear

BrightEdge shows a clear trigger pattern: prompts with buying intent spike brand mentions. ChatGPT-style systems returned brands in 99.3% of responses (avg 5.84 brands/response). Google overviews include brands far less often (6.2%, avg 0.29).

Content formats that earn trust

User-generated threads, concise video explainers, dictionary entries, and medical authority pages appear frequently as sources. Review sites also score reliably because they bundle verdicts, schema-like structure, and aggregated opinion.

“Review pages succeed because they give clear verdicts and structured signals machines and people can use.”

Format Why it wins Typical use
UGC threads Real experience, high signal Pros/cons and tips
Video explainers High engagement, favored by overviews How-to and demos
Reference sites Authoritative facts, E-E-A-T weight Definitions and medical info
  • Create citation-ready comparison blocks, short recommendation summaries, and pros/cons tables on product pages.
  • Pair on-site content with presence on trusted review and reference sources to match platform preference.
  • Track which content types earn mentions per platform and tailor hubs around those formats.

What the citation hierarchy means for Indian marketers and publishers

Mobile-first discovery in India magnifies the effect of top-cited sites on search visibility.

On phones, overview blocks sit above the fold. That pushes traditional links down and can cut click-through rates even when rankings remain steady.

Why this matters for brands: users often get answers instantly and skip clicking. For many Indian brands, this reduces traffic and lead flow despite maintaining search rank.

Where Indian brands can win

Focus on niche authority. Build deep, expert-led pages for high-intent categories like fintech explainers, telecom plan comparisons, local travel logistics, and regulated health content.

Localized signals help: INR pricing, city/state details, and Indian English phrasing create unique value that global sites rarely match.

Partnership and distribution strategies

  • Earn mentions on trusted sites by contributing expert quotes, co-authored research, and licensing-friendly data.
  • Target industry associations, major publishers, and quality community sites that the platform layer already cites.
  • Use short, citation-ready assets—FAQs, tables, and data snippets—to increase the chance of being referenced.

Measurement and next steps

Track India-focused query clusters weekly. Include Hindi-influenced English, “near me” modifiers, and price-sensitive searches to detect where overviews displace results.

“Diversify presence beyond your own websites and seek mentions on high-trust sites to protect visibility.”

How to track and optimize for AI citation share (without chasing vanity rankings)

Set up a weekly watch to catch shifting source mixes before they affect traffic. A short, repeatable cadence turns noisy shifts into clear signals you can act on.

A modern office environment depicted in a dynamic way, focusing on a central, large digital screen displaying colorful graphs and statistics related to AI citation share. In the foreground, a group of three diverse professionals in business attire are engaged in discussion, analyzing data on a tablet. The middle layer features the digital screen with visual elements like line charts and pie graphs, representing optimization strategies in artificial intelligence. In the background, large windows allow natural light to flood the room, casting soft shadows that create a warm, collaborative atmosphere. The overall mood is one of focused teamwork and innovation, showcasing a blend of technology and strategic insight in a sleek, contemporary workspace.

Monitoring: build a weekly citation dashboard

Track citations by engine, by query cluster, and by top and long-tail queries. Use consistent prompt sets and repeatable exports so week-to-week changes are comparable.

Optimization: E-E-A-T, structured data, and citation-ready blocks

Publish crisp definitions, step-by-step procedures, and expert quotes with bylines. Add Organization, FAQ, HowTo, Product, Review, or MedicalWebPage schema where relevant.

Defensive strategy: diversify engines and source types

Do not rely on one engine. Keep presence in google mode and Perplexity plus search-style engines. Spread content across reference pages, short videos, and community threads.

Opportunity mapping: find the long tail

Map specialized sites that earn 48–77% of citations in niches. Outreach, data-led PR, and quotable snippets help you earn mentions on those sites and protect visibility.

“Monitor weekly, optimize content for machines and people, and diversify where you seek mentions.”

Task Why it matters Quick step
Dashboard Spot shifts fast Weekly snapshots, alerts
Schema Improve machine readability Apply relevant structured data
Long-tail mapping Unlock steady citations List niche sites and pitch data

Conclusion

Conclusion

This report shows search discovery now depends on both rank and who gets quoted inside answers. Growth in answer-first results, heavy concentration among a few sites, and a clear Google advantage mean citation share is a core visibility KPI alongside classic rankings.

High mentions do not guarantee clicks, so teams must track on-SERP presence and downstream metrics. Use the “100 most cited” lens to see which domains earn trust, then reverse-engineer the content and distribution traits that match them.

Act now: monitor weekly, optimize content for extractable snippets, and diversify where you seek mentions. Focus on niche websites and expert pages—those long-tail opportunities let Indian brands win with tight information architecture. Build a repeatable tracking workflow and prioritize a short list of target domains and content upgrades for the next quarter.

FAQ

What does "100 Most Cited Domains in Google’s AI Mode" cover?

This report lists the top 100 domains that Google’s AI Mode referenced most often across a large corpus of prompts. It shows which websites appear as sources in AI-generated answers and highlights patterns in citation share, concentration, and the types of content those domains provide.

Why do Google’s AI Mode citations matter for search visibility in 2025?

Citations in AI Mode influence where users click, how brands gain visibility, and which publishers get referral traffic. As search shifts toward answer-first experiences and more zero-click behavior, being cited by answer engines can drive discovery and perceived authority even without traditional SERP placement.

How does the rise of answer engines and zero-click behavior affect publishers?

Answer engines reduce direct visits for basic queries because users get concise answers without clicking through. Publishers still benefit when their content is cited, but they must optimize for snippet-ready formats, structured data, and query intent to earn those citations and downstream clicks.

What does a “citation” signal about authority, trust, and source preference?

A citation signals that the engine deemed the source relevant and reliable for a given prompt. Repeated citations build an implicit trust signal, helping a domain become a preferred source for certain topics or content types across engines.

How was this report’s dataset built and measured?

The analysis used 230,000 prompts across 13 weekly snapshots, tracking roughly 100 million AI-generated citations. Each snapshot recorded which domains were referenced by Google AI Mode and comparator engines to calculate share and rank by citation volume.

Which platforms were compared in the analysis?

The report compared Google AI Mode with ChatGPT Search and Perplexity to reveal differences in domain diversity, citation stability, and sourcing behavior across engines.

What does "top cited domains" mean and how was share calculated?

“Top cited domains” refers to the domains that received the most references across prompts. Share was calculated as the percentage of total citations each domain received within the dataset and snapshot windows to show relative prominence.

Why do a handful of domains capture an outsized share of citations?

Concentration occurs because large, authoritative sites offer structured data, broad topic coverage, and massive user-generated content that answers many query types. Engines favor these reliable, easy-to-process sources for diverse prompts.

What common traits do the top-tier cited domains share?

The leaders often provide structured information, scale in user-generated content (UGC), strong brand signals, and formats like videos, reference entries, and Q&A threads that map cleanly to user queries.

Which domains were notable leaders in the 2025 datasets?

Prominent names included Wikipedia, YouTube, Reddit, LinkedIn, and Google-owned properties such as support.google.com and blog.google, reflecting both authoritative reference content and multimedia resources.

How does Google’s owned-and-operated advantage show up in AI Mode?

Google often cites its own properties—YouTube, Google.com pages, and official support materials—more frequently. That self-referential pattern boosts visibility for owned platforms and can limit referral opportunities for third-party sites.

How do AI Mode and AI Overviews differ in citation behavior?

AI Mode tends to balance multiple source types with consistent citations to LinkedIn, YouTube, Reddit, and Google assets. Overviews may prioritize different slices of content depending on intent and brevity, changing which domains appear.

What changed around the September 2025 inflection point?

Mid-September showed a notable shift in citation patterns—some domains lost share while others gained. The cause is typically a mix of algorithm updates, content availability, and changes in prompt coverage; correlation with a single factor shouldn’t be assumed.

How did Reddit and Wikipedia perform across engines after that shift?

Reddit and Wikipedia experienced divergent trends: Wikipedia remained relatively stable on AI Mode and Perplexity, while ChatGPT showed sharper declines for both, highlighting engine-specific sourcing choices and volatility.

Which sites were winners and losers after the shift?

Winners included PR Newswire and some niche publishers. Sites like Medium, Forbes, and TechRadar saw varying performance. UGC platforms moved up or down depending on engine treatment and topical relevance.

Why is AI visibility more volatile than classic SERP rankings?

AI visibility depends on short-term sourcing decisions, prompt sets, and model updates. Unlike established ranking signals, citation patterns can change quickly as engines tweak sourcing rules or update their knowledge bases.

How do the three engines show distinct "personalities" in sourcing?

Google AI Mode generally shows balanced sourcing with consistent citations across LinkedIn, YouTube, and Google properties. ChatGPT leans on a narrower set of sources and shows bigger swings. Perplexity offers the highest domain diversity and clearer citation transparency.

When are brands most likely to appear in AI responses?

Brands surface frequently for commercial intents like “best,” “compare,” “budget,” and “deals,” where users seek named recommendations or comparisons. Strong product pages and review formats help brands get cited.

What content formats attract citations from answer engines?

Engines reward formats that directly answer queries: UGC threads, video explainers, concise reference entries, and vetted medical or technical sources. Structured pages and clear, authoritative summaries increase citation odds.

Why do review sites perform consistently across engines?

Review sites aggregate opinions, scores, and product specs in a format that matches purchase-intent queries. Their structured comparisons and ratings make them easy for models to cite when users ask for recommendations.

How can Indian marketers and publishers benefit from citation hierarchies?

India’s mobile-first search behavior and local intent create chances to earn AI citations through niche authority, local platforms, and category expertise. Tailoring content to mobile formats and local queries helps capture AI-driven referral traffic.

What partnership and distribution strategies help earn mentions on trusted domains?

Collaborations with established publishers, syndication to platforms that already receive citations, and contributing authoritative content or data to those sites can increase the chance of being referenced by engines.

How should teams monitor AI citation share without chasing vanity metrics?

Build a weekly citation dashboard across engines and query clusters that tracks meaningful metrics: citation share by topic, referral clicks, and conversion impact. Focus on signals that tie citations to business outcomes.

What optimization tactics improve the chances of earning citations?

Emphasize Experience, Expertise, Authoritativeness, and Trust (E-E-A-T) in content, use structured data, and create citation-ready blocks like quick answers, FAQs, and clear summaries that match common prompts.

How can publishers reduce risk from citation volatility?

Diversify distribution across multiple engines and platforms, avoid over-reliance on a single source for traffic, and maintain evergreen, well-structured content so sudden shifts in sourcing have limited impact.

What is opportunity mapping for AI citations?

Opportunity mapping identifies long-tail domains and niche topics where the combined citation share is substantial—often accounting for 48–77% of citations in a category—so publishers can target realistic wins rather than chasing top-tier domains.
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