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In βThe science of how AI pays consideration,β I analyzed 1.2 million ChatGPT responses to grasp precisely how AI reads a web page. That is Half 2.
The place Half 1 advised you the place on a web page AI seems to be, this one tells you which pages AI routinely considers.
The information clarifies:
- Why ~30 domains personal 67% of citations in any subject.
- The web page construction that earns citations throughout 50+ distinct queries vs. the one which will get cited as soon as.
- Whether or not the ski ramp from Half 1 is definitely steeper or flatter in your vertical.

1. ~30 Domains Personal 67% Of AI Citations Per Subject
Traditional search is a winner-takes-all sport. The highest outcome will get disproportionately extra clicks than the second. Is that additionally true for ChatGPT solutions? Is the distribution of cited domains democratic or totalitarian?
Method:
- Compute the quotation share per area per vertical.
- Calculate the cumulative share captured by the highest 10% of domains.
- Dataset: 21,482 ChatGPT quotation rows, 670 distinctive domains, 2,344 distinctive URLs, 127 distinctive prompts.
Outcomes: The highest 10 domains take 46% of all citations in a subject. The highest 30 take 67%.

AI quotation is barely much less concentrated than conventional natural search, however nonetheless excessive:
- Successfully, there are ~30 seats (domains) on the quotation desk for any given subject. Every thing else is almost invisible.
- Instance: storylane.io seems as a cited supply throughout 102 distinct prompts (distinctive questions requested of ChatGPT), reprise.com throughout 98. Although reprise.com has extra complete citations (1,369 vs. storylane.ioβs 968), storylane.io exhibits up in solutions to a broader vary of various questions.
We confirmed these findings in product-comparison verticals (SaaS instruments, monetary advisors). Nevertheless, youβll see beneath that the sample is weaker in healthcare and open internet subjects, the place no single area dominates. Notably, the schooling sector receives probably the most AI citations of any vertical we studied.
What The Trade Patterns Confirmed
The findings above are from product comparability verticals (SaaS, monetary advisors), however the sample is weaker in healthcare and open internet subjects, the place no single area dominates, and stronger within the schooling sector.

Schooling is winner-take-most: the highest 10% of domains seize 59.5% of all citations.
- In case you are not already within the prime 5-10 domains in schooling, attaining quotation breadth is exceptionally laborious.
- tefl.org alone solutions 102 distinctive prompts and holds 18.75% of all Schooling citations.
Crypto is the second most concentrated at 43.0% for the highest 10%.
- A small set of technical documentation and comparability websites (alchemy.com, quicknode.com, chainstack.com) dominate Solana RPC and infrastructure queries.
- The technical nature of Solana queries means few credible sources exist; as soon as a website earns belief on this area of interest, it captures a big share.
Finance sits at 29.4% for top-10%.
- Focus is query-type particular: Monetary advisor locator pages (forfiduciary.com at 139 distinctive prompts, smartasset.com at 168 distinctive prompts) dominate city-level advisor queries.
- However the lengthy tail of economic product queries retains complete focus average.
Healthcare is the least concentrated at 13.0% for the highest 10%.
- No single area dominates. New entrants have a practical path to quotation attain.
- The quotation floor is unfold throughout a whole bunch of domains, every overlaying a small slice of telehealth, HIPAA compliance, and healthcare app queries.
CRM/SaaS and HR Tech are equally diffuse (16.1% and 14.4% top-10%).
- These are multi-product software program classes the place dozens of comparability websites, overview platforms, and vendor pages cut up citations.
- Monday.com leads CRM with solely 2.88% of all citations (37 distinctive prompts). A genuinely open aggressive area
Prime Takeaways
1. Breadth of subject protection issues greater than area authority. A single well-structured comparability web page (be taught.g2.com: 65 distinctive prompts, 495 citations) can nonetheless outperform the complete area portfolio of a widely known model. The aim is to not rank for one question, however to reply a cluster.
2. Focus displays class maturity. Fragmentation is a chance. Schooling and Crypto have slender, well-defined question areas the place a couple of authoritative sources have locked in belief. Healthcare and CRM are broad, fragmented classes the place no single area dominates. That fragmentation is your opening.
3. Quotation attain (the variety of distinct prompts a website solutions) is a extra helpful strategic metric than uncooked quotation rely. In low-concentration verticals like Healthcare and CRM, a centered 30-50 web pageΒ techniqueΒ can realistically compete for a seat on the desk. In high-concentration verticals like Schooling and Crypto, the trail is narrower: develop into the definitive useful resource on a selected sub-topic or settle for that you justβre preventing for scraps.
2. The Quotation Benefit Begins At 10,000 Phrases
In traditional Search, phrase rely and web page size are considerably indicative of ranks, so long as the standard is excessive. I puzzled, once more, if that can also be true for displaying up in ChatGPT solutions?
Method
- Measure uncooked textual content size of each cited web page.
- Group size into seven buckets.
- For every bucket, calculate common citations per web page.
Outcomes: Extra phrases do certainly correlate with extra citations, however thereβs a ceiling.

The 5,000-to-10,000 leap is the biggest single step β practically 2x. Pages above 20,000 characters common 10.18 citations every vs. 2.39 for pages below 500 characters.
The size impact is vertical-specific: Finance inverts it fully. Excessive-cited Finance pages common 1,783 phrases vs. 2,084 for low-cited pages β a 0.86x elevate. Authoritative compact sources, price tables, and regulatory summaries outperform complete guides there. The ten,000-character rule holds for SaaS and editorial content material.

Finance peaks at 5,000-10,000 phrases (10.9 citations/web page), then drops sharply at 10,000-20,000 (4.92 citations/web page).
- Finance additionally exhibits the steepest absolute acquire: Pages below 500 phrases earn solely 3.84 citations/web page whereas 5,000-10,000 pages earn 10.9, which is a 2.8x multiplier from size optimization alone.
- Very lengthy Finance pages might dilute the citation-triggering content material with redundant element.
Schooling exhibits the clearest length-wins-everything sample.
- Citations per web page climb steadily from 1.85 (below 500 phrases) to six.05 (20K+ phrases) with no drop-off.
Crypto and Product Analytics behave equally to Schooling.
- Size constantly pays off, plateauing across the 10,000-20,000 tier (5.34 and 4.01, respectively). Each are technical verticals the place comprehensiveness indicators authority.
SaaS exhibits the weakest size impact: Citations per web page vary from 1.06 (1,000-2,000 phrases) to 2.77 (20,000+ phrases).
- Even the longest CRM pages solely get 2.77 citations per web page on common.
- On this vertical, size alone doesn’t decide citations. Format, construction, and area authority seem extra vital.
Healthcare exhibits a average size impact (1.74 to three.92 citations/web page).
- However with one anomaly: 5,000-10,000 phrases (2.80) underperforms vs. 2,000-5,000 phrases (3.36).
- Very lengthy Healthcare pages might embody an excessive amount of scientific element that dilutes citation-triggering content material.
Prime Takeaways
1. Common discovering: Very brief pages (below 1,000 phrases) underperform in each vertical.Β The underperformance of skinny content material is constant, however the reward for lengthy content material is vertical-specific.
2. Goal your size based mostly on trade, content material sort, and question intent, not a common phrase rely. For Finance verticals: Purpose for five,000-10,000 phrases. Schooling, Crypto, and Product Analytics: Go so long as potential. CRM/SaaS: Prioritize construction over phrase rely.
3. 58% Of Cited URLs Are Cited As soon as
After we have a look at the citations inside a subject, we regularly see many pages on a website getting cited. So, what number of citations can a single web page get?
Method
1. Depend the variety of distinctive prompts for every web page.
- Classify variety of citations into: 1, 2-5, 6-10, 11+.
- Examine the highest URLs per vertical for structural patterns.
Outcomes: On common, 67% of cited URLs seem in just one immediate.
Consider it like a footprint sport. Uncooked quotation rely tells you the way in style a web page is. Quotation breadth tells you the way strategically invaluable it’s. An evergreen web page in AI quotation is just not one which will get cited lots; it’s one which retains showing throughout numerous queries.

The highest 4.8% of URLs (cited 10+) are all category-level comparisons or guides answering βwhat’s it,β βwho makes use of it,β βhow to decide on,β and βpricingβ in a single URL.
The quotation pool isnβt a meritocracy of one of the best reply, however the diploma varies sharply.
- CRM/SaaS has the very best one-hit price at 84.7%.
- Finance produces the highest-reach evergreen pages: forfiduciary.com covers 119 distinctive prompts.
- Crypto generates probably the most concentrated evergreen pages at 55.4% within the technical tier: chainstack.com/best-solana-rpc-providers-in-2026 (63 prompts), alchemy.com/overviews/solana-rpc (62 prompts), and rpcfast.com/weblog/rpc-node-providers (61 prompts). All three are comparability pages overlaying the Solana RPC supplier panorama from barely totally different angles.
- Schooling evergreen pages comply with a special logic: tefl.org, internationalteflacademy.com, and gooverseas.com get cited broadly as a result of they reply TEFL-adjacent queries (value, location, certification sort) from a single useful resource. One URL serves many question angles.
1. Evergreen pages share constant structural patterns:Β Class-level information format (finest X for 2025/2026), broad subject protection inside a single web page (what’s X, how to decide on X, prime X distributors, pricing), and express 12 months anchoring in URL or title. Pages that reply a category of questions earn quotation breadth.
2. The highest 5 evergreen pages in each vertical are bothΒ comparability roundups, authoritative guides, or listing/itemizing pages. No skinny single-topic web page reaches the 11+ immediate tier in any vertical.
3. A single evergreen web page overlaying 10+ question intents is value extra in AI quotation attain than 10 single-intent pages.Β The ROI of complete content material is front-loaded: one well-built web page compounds quotation attain over time. The lengthy tail exists, however the prime 5% of pages seize a disproportionate share of ongoing quotation exercise.
4. The Ski Ramp Is Steeper In Some Verticals
The science of how AI pays consideration confirmed that ChatGPT cites 44.2% from the highest 30% of any web page. Does that development maintain throughout totally different verticals?
Method: Re-run the identical positional evaluation throughout 7 verticals with 42,460 matched citations.
Outcomes: The development is actual however varies by subject. One quantity holds all over the place: The underside 10% of any web page earns 2.4-4.4% of citations, roughly 1 / 4 of what the height band earns. The conclusion part is almost invisible to AI, no matter vertical.

What The Trade Patterns Confirmed
The true peak decile throughout all verticals is just not the very opening. The ten-20% band is the place AI reads hardest in each vertical. The primary 10% is usually navigation, headlines, and intro fluff that AI skips.
- Finance is the acute case. 43.7% of citations land within the first 30% of the web page. Finance pages front-load price knowledge, percentages, and key figures. AI grabs them and infrequently reads previous the midway level.
- Healthcare and HR Tech have the flattest ramps. Helpful content material is distributed extra evenly throughout these pages.
- Schooling peaks on the 30-40% decile somewhat than 10-20%, as a result of academic content material tends to bury the important thing reply barely deeper after the intro.
Prime Takeaways
1. Put your most citable claims and knowledge within the first 30% of the web page β it doesn’t matter what trade youβre in. Summaries and conclusions hardly ever get cited.
2. For Finance manufacturers:Β Entrance-load your thesis and statistics as a lot as potential.
What This Means For How You Construct LLM Visibility
The domains that personal quotation share didnβt get there by writing higher sentences. They constructed pages that maintain trueΒ topical authority, addressing a number of queries in a single place, after which repeated that authority throughout sufficient sub-topics to carry a number of seats on the desk.
Getting cited throughout 30, 60, or 100Β distinct promptsΒ requires aΒ focused content material structure: pages constructed round question clusters and proudly owning complete subjects somewhat than particular person key phrases. Groups that preserve the normal βone key phrase, one web pageβ mannequin will probably be structurally locked out of AI quotation, even when their particular person pages are fantastically written.
However as the information exhibits, there isn’t any common playbook. The ways that work for a broad CRM platform might actively hurt a Finance model.
Methodology
We analyzed ~98,000 ChatGPT quotation rows pulled from roughly 1.2 million ChatGPT responses fromΒ Gauge.
As a result of AI behaves in another way relying on the subject, we remoted the information throughout 7 distinct, verified verticals to make sure the findings werenβt skewed by one particular trade.
Analyzed verticals:
- B2B SaaS
- Finance
- Healthcare
- Schooling
- Crypto
- HR Tech
- Product Analytics
To reverse-engineer the quotation choice, I ran the information by a number of layers of study:
- Structural parsing: I measured the uncooked character size of each cited web page and mapped heading hierarchies (H1s, H2s, H3s) to see how info structure impacts visibility.
- Positional mapping: I used Jaccard sliding-window similarity to pinpoint precisely the place on the web page the AI extracted its solutions from, all the way down to the particular decile.
- Entity & Sentiment extraction: I ran the opening textual content of distinctive cited URLs by the Google Pure Language API to categorise named entities (dates, costs, merchandise) and used TextBlob to attain sentiment, evaluating the efficiency of company content material in opposition to user-generated content material (UGC).
Featured Picture: Roman Samborskyi/Shutterstock; Paulo Bobita/Search Engine Journal









