Booking.com USA Hotel Reviews Dataset
booking.com · CSV
This comprehensive dataset offers a rich collection of over 5 million customer reviews for hotels and accommodations listed on Booking.com, specifically sourced from the United States. It provides invaluable insights into guest experiences, preferences, and sentiment across various properties and locations within the USA. This dataset is ideal for market research, sentiment analysis, hospitality trend identification, and building advanced recommendation systems.
Key Features:
- Geographic Focus: Exclusively reviews from properties located in the USA.
- Comprehensive Coverage: Includes a wide range of hotel types and sizes across different states and cities in the US, covering reviews from January 2020 to June 2025.
- Rich Detail: Each record provides detailed review information, allowing for in-depth analysis.
- Structured Format: Clean, organized, and ready for immediate use in various analytical tools and platforms.
Dive into a sample of 1,000+ records to experience the dataset's quality. For full access to this comprehensive data, submit your request at Booking reviews data.
Use Cases:
- Market Research: Gain insights into customer preferences and satisfaction in the US hospitality sector.
- Sentiment Analysis: Analyze the emotional tone of reviews to gauge customer sentiment towards hotels and services.
- Competitor Analysis: Benchmark hotel performance and identify areas for improvement against competitors.
- Trend Identification: Discover emerging trends in hotel amenities, service expectations, and guest behavior in the US.
- Recommendation Systems: Develop and train models to recommend hotels based on user preferences and review data.
- Natural Language Processing (NLP): Create and refine NLP models for text summarization, topic modeling, and opinion mining.
- Academic Research: Support studies on tourism, consumer behavior, and data science applications in hospitality.
Fields
url, hotel_name, hotel_address, country, average_score, hotel_ranking, review_title, reviewer_name, rating, reviewer_country, negative_review_text, positive_review_text, review_text, helpful_count, reviewed_at, stayed_at, tags, source, source_domain, language, uniq_id, scraped_at