New research reveals a 30:1 visibility gap in how ChatGPT discovers products, and why GEO optimization might not be the answer.New research reveals a 30:1 visibility gap in how ChatGPT discovers products, and why GEO optimization might not be the answer.

The Discovery Gap: Why ChatGPT Knows Your Startup But Won't Recommend It

TL;DR

I tested 112 Product Hunt startups with 2,240 queries across ChatGPT and Perplexity. The results challenge conventional wisdom about "Generative Engine Optimization" (GEO):

  • The Discovery Gap: ChatGPT recognizes 99% of products directly but recommends only 3% organically (30:1 ratio)
  • GEO doesn't work (yet): Zero correlation between GEO optimization and ChatGPT discovery
  • Traditional SEO wins: Backlinks (r=+0.32) and Reddit presence (r=+0.40) are the strongest predictors

Full paper: arXiv:2601.00912 \n Code & Data:GitHub

The Problem: ChatGPT Visibility for Startups

Every startup founder is asking the same question: "How do I get ChatGPT to recommend my product?"

This is a reasonable concern. As ChatGPT becomes a go-to tool for product discovery, being invisible to it means being invisible to a growing segment of potential customers.

The emerging field of Generative Engine Optimization (GEO) promises to solve this. The concept, introduced by researchers at IIT Delhi, suggests that optimizing content with citations, statistics, and authoritative language can improve visibility in AI-generated responses.

But does it actually work for ChatGPT?

I decided to find out.

The Experiment

Dataset: 112 Product Hunt Startups

I collected data on 112 products from Product Hunt's December 2024 - January 2025 leaderboard. These represent the "best case" for new startups: recently launched, actively marketed, and getting meaningful traction.

For each product, I gathered:

  • Product metadata: Name, tagline, category, URL
  • SEO metrics: Referring domains, organic traffic, domain authority
  • Social signals: Product Hunt upvotes, Reddit mentions
  • GEO scores: Citation density, statistic usage, authoritative language

Query Design: 2,240 Tests

Each product was tested with 20 queries:

Direct Queries (3 per product)

"What is [ProductName]?" "Tell me about [ProductName]" "Have you heard of [ProductName]?"

Discovery Queries (7 per product)

"What are the best [Category] tools launched in 2025?" "Recommend some new [Category] products" "What [Category] startups should I check out?" "I'm looking for a [Category] solution. What are my options?"

The distinction matters. Direct queries test recognition—does ChatGPT know your product exists? Discovery queries test recommendation—will it actually suggest your product to users?

LLMs Tested

  • ChatGPT (GPT-4): The dominant LLM without web search
  • Perplexity: Web-search-augmented LLM for comparison

The Results

Finding #1: ChatGPT's Discovery Gap is Massive

| Metric | ChatGPT | Perplexity | |----|----|----| | Direct Recognition | 99.4% | 94.3% | | Organic Discovery | 3.3% | 8.3% | | Visibility Gap | 30:1 | 11:1 |

ChatGPT knows almost every startup exists. When asked directly, it can provide accurate descriptions, features, and use cases.

But when users ask for recommendations—the queries that actually drive customer acquisition—these same startups almost never appear.

This is the Discovery Gap: the massive divide between ChatGPT's knowledge and its recommendations.

\

\

Finding #2: GEO Optimization Shows No Effect on ChatGPT

To measure GEO optimization, I adapted the scoring methodology from Aggarwal et al. (2024) — the IIT Delhi researchers who introduced the concept of Generative Engine Optimization in their seminal paper "GEO: Generative Engine Optimization".

Their framework measures optimization across multiple dimensions:

  • Citation density — References to authoritative sources
  • Statistical content — Use of numbers and data points
  • Authoritative language — Confident, expert-sounding phrasing
  • Expert quotations — Inclusion of expert opinions
  • Fluency optimization — Clear, well-structured content

Using this established GEO scoring framework, I calculated scores for each product and compared them to ChatGPT discovery rates.

The correlation?

r = -0.10 (not statistically significant)

Products with high GEO scores were no more likely to be recommended by ChatGPT than products with low scores. The fancy optimization tactics that the GEO literature promotes showed zero measurable impact.

Finding #3: Traditional SEO Signals Still Matter

If GEO doesn't work, what does?

| Predictor | Correlation | p-value | |----|----|----| | Reddit Mentions | +0.40 | <0.01 | | Referring Domains | +0.32 | <0.001 | | Product Hunt Upvotes | +0.23 | <0.05 | | GEO Score | -0.10 | n.s. |

The strongest predictors are the same factors that have driven SEO for decades:

  1. Reddit presence (r = +0.40): Products with genuine community discussions got recommended more often
  2. Backlinks (r = +0.32): More referring domains = more ChatGPT visibility
  3. Social proof (r = +0.23): Product Hunt engagement correlated with discovery

\

\

\

Finding #4: Perplexity's Web Search Provides an Edge

Perplexity, with its real-time web search, achieved 2.5x better discovery rates than ChatGPT (8.3% vs 3.3%).

This suggests that web access meaningfully improves an LLM's ability to surface new products. ChatGPT, limited to its training data, struggles more with recent launches.

Why Doesn't GEO Work for ChatGPT?

Based on my analysis, I have three hypotheses:

1. The Training Data Problem

ChatGPT is trained on web data up to a knowledge cutoff. For products launched after that cutoff, no amount of GEO optimization will help—the content simply isn't in the training set.

2. The Authority Gap

GEO techniques optimize the content of your pages. But ChatGPT appears to weight external signals (backlinks, mentions, authority) more heavily when deciding what to recommend.

A perfectly optimized landing page with zero backlinks may still be invisible.

3. The Recommendation vs Recognition Split

ChatGPT's knowledge retrieval and recommendation systems appear to work differently. Knowing about a product doesn't mean recommending it. The 30:1 gap proves this.

Practical Implications for Founders

If you're a startup founder thinking about ChatGPT visibility, here's my takeaway:

1. Don't Panic About GEO (Yet)

The GEO hype cycle is in full swing, but my data suggests it doesn't work for new products targeting ChatGPT. Save your optimization energy for proven strategies.

2. Focus on Traditional SEO

Backlinks and referring domains showed the strongest correlation with ChatGPT discovery. The boring work of building genuine web presence still matters.

3. Build Community Presence

Reddit mentions were the single strongest predictor (r = +0.40). Authentic community engagement drives AI visibility.

4. Track the Right Metrics

If you want to measure LLM visibility, track organic discovery queries—not just direct recognition. The 30:1 gap between them is where the opportunity lies.

5. Watch This Space

LLM capabilities are evolving rapidly. GEO may become relevant as models improve. But for now, the fundamentals win.

Limitations & Future Work

This study has limitations:

  • Dataset: 112 products from Product Hunt may not generalize to all markets
  • Timing: LLM capabilities change rapidly; these results reflect a specific snapshot
  • Correlation vs causation: These are correlational findings, not causal claims

I've open-sourced all code and data for replication. If you run this experiment and find different results, I'd love to hear about it.

Market Opportunity
Startup Logo
Startup Price(STARTUP)
$0.0004165
$0.0004165$0.0004165
-6.25%
USD
Startup (STARTUP) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Puregold’s ‘Pusong Panalo’ brightens students’ path in remote Rizal village

Puregold’s ‘Pusong Panalo’ brightens students’ path in remote Rizal village

In an upland village in Tanay, Rizal, children would trek for up to one hour before sunrise just to make it to class. Many from poor and indigenous families, these
Share
Bworldonline2026/01/09 14:10
House of Doge Acquires Stake in Italian Football Club, Boosting Dogecoin’s Real-World Ties

House of Doge Acquires Stake in Italian Football Club, Boosting Dogecoin’s Real-World Ties

The post House of Doge Acquires Stake in Italian Football Club, Boosting Dogecoin’s Real-World Ties appeared on BitcoinEthereumNews.com. COINOTAG recommends • Exchange signup 💹 Trade with pro tools Fast execution, robust charts, clean risk controls. 👉 Open account → COINOTAG recommends • Exchange signup 🚀 Smooth orders, clear control Advanced order types and market depth in one view. 👉 Create account → COINOTAG recommends • Exchange signup 📈 Clarity in volatile markets Plan entries & exits, manage positions with discipline. 👉 Sign up → COINOTAG recommends • Exchange signup ⚡ Speed, depth, reliability Execute confidently when timing matters. 👉 Open account → COINOTAG recommends • Exchange signup 🧭 A focused workflow for traders Alerts, watchlists, and a repeatable process. 👉 Get started → COINOTAG recommends • Exchange signup ✅ Data‑driven decisions Focus on process—not noise. 👉 Sign up → House of Doge, the corporate arm of the Dogecoin Foundation, has acquired a majority stake in U.S. Triestina Calcio 1918, marking the first time a cryptocurrency company owns a European football club. This partnership with Brag House Holdings injects capital for operations and introduces crypto payments for fans. Landmark Acquisition: House of Doge secures majority ownership in Italy’s historic Triestina club, blending crypto with sports. Capital Injection: New funds will enhance team operations, community programs, and fan experiences through blockchain integration. Strategic Merger: Ties into a $50 million Nasdaq merger with Brag House, expanding Dogecoin’s ecosystem into real-world assets with a projected growth in user engagement by 30% based on similar crypto-sports ventures. Discover how House of Doge’s acquisition of Triestina Calcio revolutionizes crypto in football. Explore the impact on Dogecoin community and real-world assets. Read now for insights on this groundbreaking deal! What is the House of Doge Acquisition of U.S. Triestina Calcio 1918? House of Doge acquisition of U.S. Triestina Calcio 1918 represents a pioneering move where the Dogecoin Foundation’s corporate entity gains majority control of one…
Share
BitcoinEthereumNews2025/10/21 06:40
Shiba Inu Price Forecast: Why This New Trending Meme Coin Is Being Dubbed The New PEPE After Record Presale

Shiba Inu Price Forecast: Why This New Trending Meme Coin Is Being Dubbed The New PEPE After Record Presale

While Shiba Inu (SHIB) continues to build its ecosystem and PEPE holds onto its viral roots, a new contender, Layer […] The post Shiba Inu Price Forecast: Why This New Trending Meme Coin Is Being Dubbed The New PEPE After Record Presale appeared first on Coindoo.
Share
Coindoo2025/09/18 01:13