2 datasets found
  1. d

    Transactional E-receipt Data | Hotel, Travel, Hospitality

    • datarade.ai
    Updated Jun 19, 2024
    + more versions
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    Measurable AI (2024). Transactional E-receipt Data | Hotel, Travel, Hospitality [Dataset]. https://datarade.ai/data-products/transactional-e-receipt-data-hotel-travel-hospitality-measurable-ai
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    Dataset updated
    Jun 19, 2024
    Dataset authored and provided by
    Measurable AI
    Area covered
    Belgium, Nigeria, Sri Lanka, Tunisia, Korea (Republic of), Argentina, Jordan, United States of America, France, Germany
    Description

    Metrics that can be unearthed will be ones contained in the email booking invoice such as Hotel name, type of room, dates, check in and check out times, price paid, duration of stay. We can go back to 5 years of history.

    We also have cancellation emails.

    Any hotel vendor can be requested too. We will conduct a search in our database to see if it justifies a parser build to extract the data.

  2. d

    RV Owners Database & Mailing List – 10.7M Verified Recreational Vehicle...

    • datarade.ai
    Updated Sep 12, 2025
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    AmeriList, Inc. (2025). RV Owners Database & Mailing List – 10.7M Verified Recreational Vehicle Owners [Dataset]. https://datarade.ai/data-products/rv-owners-database-mailing-list-10-7m-verified-recreation-amerilist-inc
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    .csv, .xls, .txt, .pdfAvailable download formats
    Dataset updated
    Sep 12, 2025
    Dataset authored and provided by
    AmeriList, Inc.
    Area covered
    United States of America
    Description

    The AmeriList RV Owners Database is a powerful, up-to-date mailing list comprising over 10.7 million RV owners across the United States. This specialized consumer dataset is built to fuel targeted direct marketing campaigns via postal mail, email, and telemarketing, helping brands, service providers, and marketers reach RV enthusiasts with precision. Whether you’re in outdoor gear, insurance, travel, campground services, RV parts & accessories, or hospitality, this database unlocks access to high-value prospects who live for the open road.

    Key Features & Data Quality

    • Extensive Universe: 10,774,530 RV owners in the U.S. matched for multiple channels (postal, email, telemarketing).
    • Rich segmentation options: You can target by RV type and class (Motorhome Class A, B, C, travel trailers, camper types), RV year; demographics such as age, household income, net worth; geography (state, zip, city, radius etc.); interests, hobbies; presence of children, ethnicity, and more.
    • High data integrity: The list is compiled from multiple sources: registration data, point-of‐sale & service, membership & subscription records, surveys and online activity. It is standardized & verified via major data hygiene tools and postal certifications including USPS certified procedures, CASS, LACSLink, NCOALink, and DPV verification.
    • Update frequency: Data is refreshed monthly to keep contacts current. Address changes are managed with NCOA (National Change of Address).
    • Flexibility in order size & use: Minimum order, usage levels etc., designed to accommodate both large and smaller campaigns.

    Typical Profile & Behavior - The average RV owner in the U.S. is about 48 years old and likely to travel multiple times per year in their vehicle. - They tend to seek comfort, quality, adventure, and gear, making them especially responsive to offers for travel services, camping supplies, insurance, outdoor lifestyle brands, RV accessories, maintenance & repair providers.

    Ideal Use Cases / Campaign Fit This dataset is especially well suited for marketers and businesses in: - Outdoor recreation & camping gear & supplies - RV parks, campgrounds & travel accommodations - Insurance & extended warranty providers for RVs - Automotive service, RV repair, parts & accessories - Travel brands, restaurateurs, fuel stations along travel corridors - Financial services, lifestyle brands targeting affluent / adventure-minded customers

    By combining detailed demographic and RV usage / ownership segmentations, campaigns can be highly tailored, improving response rates, reducing waste, and driving higher ROI.

    Technical & Operational Details - Channels delivered: Postal mail, email, telemarketing. - Certifications & Accuracy tools: USPS-certified address and mailing standards; CASS; LACSLink; DPV; NCOALink for address update; regular monthly refreshes. - Minimum order thresholds & pricing: Minimum orders start at 5,000 records. Base rates vary depending on campaign channel, refinement, order size, and segment selections.

    Data delivery format & options: Lists can be delivered electronically (e.g. Excel, comma-delimited text), and via postal mailing list services. Suppression, hygiene, de-duplication, and other enhancements are generally available.

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Share
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Email
Click to copy link
Link copied
Close
Cite
Measurable AI (2024). Transactional E-receipt Data | Hotel, Travel, Hospitality [Dataset]. https://datarade.ai/data-products/transactional-e-receipt-data-hotel-travel-hospitality-measurable-ai

Transactional E-receipt Data | Hotel, Travel, Hospitality

Explore at:
Dataset updated
Jun 19, 2024
Dataset authored and provided by
Measurable AI
Area covered
Belgium, Nigeria, Sri Lanka, Tunisia, Korea (Republic of), Argentina, Jordan, United States of America, France, Germany
Description

Metrics that can be unearthed will be ones contained in the email booking invoice such as Hotel name, type of room, dates, check in and check out times, price paid, duration of stay. We can go back to 5 years of history.

We also have cancellation emails.

Any hotel vendor can be requested too. We will conduct a search in our database to see if it justifies a parser build to extract the data.

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