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The majority of guests on Airbnb are women. Most Airbnb guests are aged 25 to 34.
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By Huggingface Hub [source]
This dataset offers a unique and comprehensive look into the expansive Airbnb industry in New York City. We capture 20,000+ Airbnbs with its associated data such as descriptions, rates, reviews and availability. Professionals researching this industry will find it an invaluable resource in providing insight to the ever popular Airbnb market that can be used for their advantage.
This dataset showcases some of the most important attributes for each listing: host name, neighborhood group, location (latitude/longitude coordinates), room type, price per night, minimum nights required to book a stay at this listing , total number of reviews and ratings received by guests over time (including reviews per month and last review date), calculated host listing count (indicates how many listings are offered by each host) along with 365 days worth of availability score. With all these parameters one can understand dynamics of demand & supply & further utilize them accordingly to maximize returns or occupancy greeting never before seen transparency into NYC’s Airbnb scene
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This dataset can be used to gain a comprehensive understanding of the Airbnb market in New York City. The data offers descriptions, rates, reviews and availability for over 20,000 Airbnbs in NYC.
Here are few tips on how to use this dataset: - Use the latitude and longitude coordinates to visualize the variety of Airbnbs located across all five boroughs of New York City using mapping programs like Google Maps or ArcGIS. - Determine the versatile price ranges offered by Airbnb listings by looking at the “price” column available for each listing . - Analyze reviews scored by guests who have used an Airbnb in order to better understand customer experience with different services through columns such as “number_of_reviews” and “last_review.
4 Understand how often properties are made available for booking based on their popularity through columns like “availability_365 and reviews_per_month. . 5 Investigate listing host data by looking into their description (host name) as well as number of listings they have booked (calculated host listing count)
- Determining the listings with the highest satisfaction ratings for potential customers to book.
- Analyzing neighborhood trends in prices, availability, and reviews to identify hot areas of competition within the Airbnb market.
- Predicting future prices throughput examining properties such as review scores and availability rate to provide forecast information to AirBnB owners
If you use this dataset in your research, please credit the original authors. Data Source
License: CC0 1.0 Universal (CC0 1.0) - Public Domain Dedication No Copyright - You can copy, modify, distribute and perform the work, even for commercial purposes, all without asking permission. See Other Information.
File: train.csv | Column name | Description | |:-----------------------------------|:------------------------------------------------------------------------------------| | name | The name of the Airbnb listing. (String) | | host_name | The name of the host of the Airbnb listing. (String) | | neighbourhood_group | The neighbourhood group the Airbnb listing is located in. (String) | | latitude | The latitude coordinate of the Airbnb listing. (Float) | | longitude | The longitude coordinate of the Airbnb listing. (Float) | | room_type | The type of room offered by the Airbnb listing. (String) | | price | The price per night of the Airbnb listing. (Integer) | | minimum_nights | The minimum number of nights required for booking the Airbnb listing. (Integer) | | number_of_reviews | T...
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These are the Airbnb statistics on gross revenue by country.
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Leverage our Airbnb dataset to gain comprehensive insights into global short-term rental markets. Track property details, pricing trends, reviews, availability, and amenities to optimize pricing strategies, conduct market research, or enhance travel-related applications. Data points may include listing ID, host ID, property type, price, number of reviews, ratings, availability, and more. The dataset is available as a full dataset or a customized subset tailored to your specific needs.
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TwitterAs of December 2024, Airbnb's global market capitalization was **** billion U.S. dollars, down from around **** billion U.S. dollars the previous year. The company's market capitalization peaked in 2021 at over *** billion U.S. dollars.
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Comprehensive Airbnb dataset repository offering detailed vacation rental analytics worldwide including property listings, pricing trends, host information, review sentiment analysis, and occupancy rates for short-term rental market intelligence and investment research.
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TwitterSee the average Airbnb revenue & other vacation rental data in Gainesville in 2025 by property type & size, powered by Airbtics. Find top locations for investing.
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Comprehensive Airbnb dataset for Curitiba, Brazil providing detailed vacation rental analytics including property listings, pricing trends, host information, review sentiment analysis, and occupancy rates for short-term rental market intelligence and investment research.
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This dataset, titled 'Airbnb Market Analysis and Real Estate Sales Data (2019),' comprises a comprehensive collection of information pertaining to the Airbnb rental market and property sales in two distinct areas within California: Big Bear and Joshua Tree, along with their associated zip codes (92314, 92315, 92284, and 92252). The dataset provides monthly aggregated data, allowing for an in-depth analysis of rental and real estate market trends in these regions. It includes the following files:
This file contains listing-level information from 2019, aggregated on a monthly basis. It encompasses various metrics, such as unique property codes (unified_id), generated revenue, availability (openness), occupancy ratios, nightly rates, lead times, and average length of stay for reservations made each month. Additionally, it provides insights into property amenities.
This file indicates whether a listing has specific amenities, denoting their presence with a value of 1 or their absence with a value of 0. Notably, it identifies the availability of a pool or hot tub in each listing.
This file contains latitude and longitude coordinates for each listing, enabling precise spatial analysis and visualization.
This dataset provides information concerning properties available for sale within the study areas. In the Joshua Tree region (zip codes 92284 and 92252), there are two separate files—one presenting the overall information about sales properties and the other focusing on properties with pools.
This dataset is a valuable resource for researchers and analysts interested in gaining insights into the real estate and Airbnb rental markets in California, particularly within the specified regions."
This dataset provides a strong foundation for Power BI reporting, enabling the creation of insightful reports and dashboards. Analysts can utilize joins on unique IDs to extract key factors and KPIs, facilitating data-driven decision-making. Whether it's optimizing Airbnb listings, making informed real estate investments, or shaping policies, this dataset serves as a valuable resource for Power BI users seeking to gain deeper insights and drive data-driven strategies in the California real estate market
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TwitterSee the average Airbnb revenue & other vacation rental data in Barcelona in 2025 by property type & size, powered by Airbtics. Find top locations for investing.
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TwitterSee the average Airbnb revenue & other vacation rental data in Cyprus in 2025 by property type & size, powered by Airbtics. Find top locations for investing.
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This is the complete breakdown of how much revenue Airbnb makes in commission from listings in each region.
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TwitterSee the average Airbnb revenue & other vacation rental data in Abu Dhabi in 2025 by property type & size, powered by Airbtics. Find top locations for investing.
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TwitterSee the average Airbnb revenue & other vacation rental data in Bali in 2025 by property type & size, powered by Airbtics. Find top locations for investing.
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TwitterSee the average Airbnb revenue & other vacation rental data in Oostende in 2025 by property type & size, powered by Airbtics. Find top locations for investing.
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TwitterSee the average Airbnb revenue & other vacation rental data in San Diego in 2025 by property type & size, powered by Airbtics. Find top locations for investing.
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TwitterSee the average Airbnb revenue & other vacation rental data in Lisbon in 2025 by property type & size, powered by Airbtics. Find top locations for investing.
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This dataset provides extensive information about Airbnb properties listed in Los Angeles, California. It offers a wealth of details suitable for analyzing short-term rental trends, exploring traveler behavior, and studying pricing dynamics within one of the most vibrant tourism markets in the U.S.
As Airbnb continues to impact urban rental markets, this dataset allows analysts, researchers, and real estate professionals to investigate how the short-term rental market shapes the local economy and influences housing availability. Users can leverage this dataset to perform location-based analysis, identify seasonal occupancy trends, and explore the popularity of amenities and property types.
id: Unique identifier assigned to each property listing.
name: Property listing name as provided by the host.
host_id:Unique identifier assigned to the host of the property.
host_name:Name of the host associated with the property.
host_since:Date on which the host joined Airbnb.
host_response_time: Typical response time of the host to guest inquiries.
host_response_rate:Percentage of guest inquiries that the host responded to.
host_is_superhost: Indicates whether the host is a Superhost (True/False).
neighbourhood_cleansed: Neighborhood name where the property is located.
neighbourhood_group_cleansed: Standardized neighborhood group or district where the property is located.
latitude: Geographic latitude coordinate.
longitude: Geographic longitude coordinate.
property_type: Type of property.
room_type: Type of room offered (e.g., Entire home/apt, Private room, Shared room).
accommodates: Maximum number of guests that the property can accommodate.
bathrooms: Number of bathrooms in the property.
bedrooms: Number of bedrooms in the property.
beds: Number of beds in the property.
price: Total price based on minimum nights required for booking.
minimum_nights: Minimum number of nights required for a booking.
availability_365:Number of days the property is available for booking in the next 365 days.
number_of_reviews: Total number of reviews received for the property.
review_scores_rating: Average rating score based on guest reviews (5 is maximum value).
license: License, if applicable.
instant_bookable: Indicates whether guests can book the property instantly (True/False).
This dataset is part of Inside Airbnb, Los Angeles California on September 04, 2024. Link found here
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TwitterIn New York City, one of the United States’ most iconic destinations, Airbnb has established itself as a key player in the accommodation market. In 2025, Airbnb customers booked an average of ** nights per stay, with an average price of *** U.S. dollars per night. Meanwhile, the average income per property was ***** U.S. dollars that year. Are Airbnb rentals expensive in New York City? As of early 2024, the most expensive Airbnb properties per night in the United States were in *************. This was followed by *************************. In comparison, the average cost of a night’s stay at an Airbnb property in New York City is less than half of the cost of a night in *************. How many Airbnb properties are there in New York City? In early 2024, the Airbnb market in New York City offered more than **** thousand properties accommodating to the different needs of visitors to the city. There are various types of Airbnb properties in New York City, the most common of which were entire homes and apartments, followed by private rooms. The majority of Airbnb listings also catered for longer-term stays, in light of city regulations on housing.
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The majority of guests on Airbnb are women. Most Airbnb guests are aged 25 to 34.