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From “never mentioned" to the default recommendation in AI travel planning

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300 Employees
United States

The Challenge

This operator already had what most hotel groups want: a distinctive, personality-driven guest experience and prime, city-center locations.

But when travelers began planning trips inside AI assistants (“best boutique hotel in Midtown,” “where to stay near Union Square,” “pet-friendly hotel in the Gaslamp,” “unique boutique hotel in Seattle”), the recommendations skewed toward:

  • mega brands with massive web footprints,
  • OTAs and listicles that AI systems frequently cite,
  • competitors with clearer “reference-style” signals (FAQs, amenities, policies, neighborhood context).

In short: they were famous to humans, but fuzzy to machines, and AI answers were stealing the first impression.

The Solution

They adopted Meridian to turn a highly differentiated hotel brand into an AI-readable, citation-friendly one without losing voice, vibe, or design.

1. Built an “AI Travel Prompt Map” for every city

Meridian tracked the exact prompt categories that drive bookings:

  • “Where to stay” (city + neighborhood + landmark intent)
  • “Best boutique hotel for ___” (style, couples, solo, work trips)
  • “Pet-friendly boutique hotel”
  • “Walkable to ___” (venues, convention centers, theaters, stadiums)
  • “Direct booking vs OTA” comparisons
  • “Unique hotel experience” intent (the stuff that makes this brand this brand)

2. Built property pages into “AI answer pages”

Meridian’s Website Insights revealed a classic hospitality gap: beautiful pages, but not enough high-signal, structured clarity.

So the team shipped:

  • Amenities + policies written in “reference language” (the way AI quotes/cites)
  • FAQ blocks built around traveler intent (parking, pet fees, check-in, cancellation)
  • Neighborhood context (“what you’re near” + why it matters)
  • Stronger internal linking from city hubs → properties → offers
  • Schema/structured data improvements so assistants could reliably interpret each location

3. Won the citations AI trusts most

Meridian surfaced off-site credibility opportunities that disproportionately affect AI recommendations:

  • authoritative city travel guides + “where to stay” roundups
  • venue / event pages listing “recommended nearby hotels”
  • local tourism and neighborhood resources
  • brand-and-property profile pages that AI assistants commonly cite

4. Ran a weekly “Visibility Sprint”

Every week:

  • identify the prompts where they should be recommended but weren’t
  • ship the highest-leverage on-page fixes + content updates
  • close citation gaps where competitors were getting referenced instead

The Outcome

By week twelve, Meridian tracking showed significant improvements:

  • Direct booking revenue: +18% uplift vs baseline (attribution-based; driven by city + neighborhood intent)
  • AI-driven demand: 4.1× increase in AI-influenced sessions landing on property pages and offer pages
  • Shortlist dominance: the brand appeared in the final shortlist (top 5) for ~60% of tracked “best boutique hotel in ___” prompts
  • Higher-quality traffic: +31% increase in “book-now-intent” sessions (property page → booking engine starts)
  • Brand pull-through: +27% lift in branded search volume in markets where visibility moved fastest

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