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Listings per region on Airbnb declined from 2020 to 2021. Globally in 2021, there were a total of 12.7 million listings.
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These are the Airbnb statistics on gross revenue by country.
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In 2007, a cash-strapped Brian Chesky came up with a shrewd way to pay his $1,200 San Francisco apartment rent. He would offer “Air bed and breakfast”, which consisted of three airbeds,...
What makes your data unique? - We have our proprietary AI to clean outliers and to calculate occupancy rate accurately.
How is the data generally sourced? - Web scraped data from Airbnb. Scraped on a weekly basis.
What are the primary use-cases or verticals of this Data Product? - Tourism & DMO: A one-page CSV will give you a clear picture of the private lodging sector in your entire country. - Property Management: Understand your market to expand your business strategically. - Short-term rental investor: Identify profitable areas.
Do you cover country X or city Y?
We have data coverage from the entire world. Therefore, if you can't find the exact dataset you need, feel free to drop us a message. Our clients have bought datasets like 1) Airbnb data by US zipcode 2) Airbnb data by European cities 3) Airbnb data by African countries.
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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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The current average price per night globally on Airbnb is $137 per night.
As of December, 2024, there were over ** thousand listings for room and apartment rentals in London on the Airbnb website, the highest of any other major European city. Airbnb listings were also high in Paris, Rome and Madrid. Paris accounted for around ** thousand listings, while Rome and Madrid had over ** and ** thousand, respectively. Controversy of Airbnb in Europe Airbnb has become an increasingly popular option for tourists looking for local accommodation. Visitors are attracted to using Airbnb properties instead of hotels and other traditional travel accommodation mainly due to cheaper prices, but also for the location, and to gain an authentic experience. However, the site is facing ongoing legal problems, with some destinations moving to ban or restrict rentals from the site because they worsen housing problems and undermining hotel regulations. Many European cities, including Amsterdam and Paris, have placed limits on the length of rentals, and others such as Barcelona have introduced strict regulations for hosts. The rise of Airbnb Airbnb is one of the most successful companies in the global sharing economy. The company was founded in San Francisco, California in 2008, after being conceived by two entrepreneurs looking for a way to offset their high rental costs. Airbnb was developed as an online platform for hosts to rent out their properties on a short-term basis. It now competes with other online travel booking websites, including Booking.com and Expedia.
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Dataset is from http://tomslee.net/airbnb-data-collection-get-the-data
room_id: A unique number identifying an Airbnb listing. The listing has a URL on the Airbnb web site of http://airbnb.com/rooms/room_id
host_id: A unique number identifying an Airbnb host. The host’s page has a URL on the Airbnb web site of http://airbnb.com/users/show/host_id
room_type: One of “Entire home/apt”, “Private room”, or “Shared room”
borough: A subregion of the city or search area for which the survey is carried out. The borough is taken from a shapefile of the
city that is obtained independently of the Airbnb web site. For some cities, there is no borough information; for others the borough may be a number. If you have better shapefiles for a city of interest, please send them to me.
neighborhood: As with borough: a subregion of the city or search area for which the survey is carried out. For cities that have both, a neighbourhood is smaller than a borough. For some cities there is no neighbourhood information.
reviews: The number of reviews that a listing has received. Airbnb has said that 70% of visits end up with a review, so the number of reviews can be used to estimate the number of visits. Note that such an estimate will not be reliable for an individual listing (especially as reviews occasionally vanish from the site), but over a city as a whole it should be a useful metric of traffic.
overall_satisfaction: The average rating (out of five) that the listing has received from those visitors who left a review.
accommodates: The number of guests a listing can accommodate.
bedrooms: The number of bedrooms a listing offers.
price: The price (in $US) for a night stay. In early surveys, there may be some values that were recorded by month.
minstay: The minimum stay for a visit, as posted by the host.
latitude and longitude: The latitude and longitude of the listing as posted on the Airbnb site: this may be off by a few hundred metres. I do not have a way to track individual listing locations with
last_modified: the date and time that the values were read from the Airbnb web site. The first line of the CSV file holds the column headings.
Here are the cities, the survey dates, and a link to download each zip file.
Aarhus Survey dates: 2016-10-28 (2258 listings), 2016-11-26 (1900 listings), 2017-01-21 (2167 listings), 2017-02-21 (2295 listings), 2017-03-30 (2323 listings), 2017-04-18 (2398 listings), 2017-04-28 (2360 listings), 2017-05-15 (2437 listings), 2017-06-19 (2802 listings), 2017-07-28 (3142 listings)
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Airbnb Statistics:Â Airbnb is one of the best booking websites on the internet, and presently, there are almost 150 million users of this website. Moreover, the COVID-19 pandemic had impacted Airbnb's valuation, which had decreased its value from USD 35 billion to USD 18 billion in 2022. Since the company was launched in 2007, they have gone from one rental to almost 5.6 million active listings and nearly 4 million hosts.
Short-term rentals have changed the way people think about traveling, and this trend has continued to develop despite major benders like accommodation restrictions and travel restrictions. Let's shed more light on Airbnb Statistics through this article.
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The majority of guests on Airbnb are women. Most Airbnb guests are aged 25 to 34.
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The data was taken from http://tomslee.net/airbnb-data-collection-get-the-data. The data was collected from the public Airbnb web site and the code was used is available on https://github.com/tomslee/airbnb-data-collection.
room_id: A unique number identifying an Airbnb listing. The listing has a URL on the Airbnb web site of http://airbnb.com/rooms/room_id
host_id: A unique number identifying an Airbnb host. The host’s page has a URL on the Airbnb web site of http://airbnb.com/users/show/host_id
room_type: One of “Entire home/apt”, “Private room”, or “Shared room”
borough: A subregion of the city or search area for which the survey is carried out. The borough is taken from a shapefile of the city that is obtained independently of the Airbnb web site. For some cities, there is no borough information; for others the borough may be a number. If you have better shapefiles for a city of interest, please send them to me.
neighborhood: As with borough: a subregion of the city or search area for which the survey is carried out. For cities that have both, a neighbourhood is smaller than a borough. For some cities there is no neighbourhood information.
reviews: The number of reviews that a listing has received. Airbnb has said that 70% of visits end up with a review, so the number of reviews can be used to estimate the number of visits. Note that such an estimate will not be reliable for an individual listing (especially as reviews occasionally vanish from the site), but over a city as a whole it should be a useful metric of traffic.
overall_satisfaction: The average rating (out of five) that the listing has received from those visitors who left a review.
accommodates: The number of guests a listing can accommodate.
bedrooms: The number of bedrooms a listing offers.
price: The price (in $US) for a night stay. In early surveys, there may be some values that were recorded by month.
minstay: The minimum stay for a visit, as posted by the host.
latitude and longitude: The latitude and longitude of the listing as posted on the Airbnb site: this may be off by a few hundred metres. I do not have a way to track individual listing locations with
last_modified: the date and time that the values were read from the Airbnb web site.
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This dataset shows main information about rooms available on AirBnB. Information come from the open data website of Air Bnb wich covered major cities worldwide.For anonymizing data, precision of geo-coordinates point is 300m.
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Airbnb has a total of 6,132 employees that work for the company. 52.5% of Airbnb workers are male and 47.5% are female.
In March 2024, over *** million unique global visitors visited Airbnb.com, up from **** million visitors in October 2023. Airbnb is an online marketplace for short-term holiday and travel rentals.
Airbnb, a home sharing economy platform, gives users an alternative to traditional hotel accommodation by allowing them to rent accommodation from people who are willing to share their homes. The platform also allows consumers to book "experiences" in the regions they visit. In 2024, Airbnb reported over *** million booked nights and experiences. How much revenue does Airbnb make? In 2024, the total revenue of Airbnb worldwide increased by nearly ten percent over the previous year. This continued the upward trend which the company has experienced since recovering from the coronavirus (COVID-19) pandemic. ************* generated the highest share of Airbnb’s worldwide revenue in 2024, at **** billion U.S. dollars. How many people visit the Airbnb website? Airbnb ranked ***** among the most popular travel and tourism websites worldwide based on average monthly visits, behind *******************************. In 2024, airbnb.com saw its highest number of unique global visitors in March, at *** million. Meanwhile, Airbnb ranked fourth among leading travel apps globally, with over ** million downloads in 2024.
he dataset used for this experiment consists of structured data where each row represents an individual Airbnb listing from the United States. The dataset contains approximately 50,000 rows and 15 columns, capturing detailed information about various Airbnb properties across different locations. Each row corresponds to a unique listing and includes features such as listing_id, host_id, city, property_type, room_type, price, number_of_reviews, and additional attributes that can potentially influence the listing price. The main objective of this experiment is to predict the listing price, which is a numeric and continuous variable, based on the provided input features. By utilizing various machine learning regression techniques, such as Random Forest Regressor or XGBoost, the goal is to model the relationships between the property features and the final listing price accurately. Preprocessing steps including handling missing values, encoding categorical variables, and outlier removal will be applied to ensure high data quality. The predictive models will be evaluated based on metrics such as Mean Squared Error (MSE) and R-squared (R²), ensuring robust and interpretable results.
Bengaluru, the southern Indian city had the highest occupancy rate of over ** percent among Airbnb listings in 2023. New Delhi followed closely with average occupancy rate of nearly ** percent.
Context
Since 2008, guests and hosts have used Airbnb to travel in a more unique, personalized way. This dataset describes the listing activity of homestays in Copenhagen, Denmark.
Content
The following Airbnb activity is included in the dataset:
Inspiration
Can you describe the vibe of each neighborhood using listing descriptions? What are the busiest times of the year to visit Copenhagen? By how much do prices spike? Is there a general upward trend of both new Airbnb listings and total Airbnb visitors to Copenhagen?
Acknowledgement
This dataset is part of Airbnb Inside, and the original source can be found here. The data is available and can be downloaded from Here.
Columns name:
['id', 'name', 'host_id', 'host_name', 'neighbourhood_group',
'neighbourhood', 'latitude', 'longitude', 'room_type', 'price',
'minimum_nights', 'number_of_reviews', 'last_review',
'reviews_per_month', 'calculated_host_listings_count',
'availability_365', 'number_of_reviews_ltm', 'license']
Number of rows: 13815
Disclaimers:
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Since 2008, guests and hosts have used Airbnb to expand on traveling possibilities and present more unique, personalized way of experiencing the world. This dataset describes the listing activity and metrics in NYC, NY for 2019.
This data file includes all needed information to find out more about hosts, geographical availability, necessary metrics to make predictions and draw conclusions.
This public dataset is part of Airbnb, and the original source can be found on this website.
This dataset describes Airbnb homestay listing activity in New Orleans, Louisiana. Compiled on 7 November 2021, it is part of the Inside Airbnb initiative, which aims to quantify the impact of short-term rentals on housing and residential communities. The data includes listing details and reviews, with personally identifying information removed.
It offers insights into the New Orleans short-term rental market, a city significantly impacted by Hurricane Katrina and subsequent redevelopment efforts, which have raised concerns about gentrification and resident displacement. The dataset allows users to explore fundamental questions about Airbnb's presence, such as the number of listings in a neighbourhood, how many properties are rented to tourists versus long-term residents, host earnings, and the prevalence of hosts operating multiple listings. It can also inform discussions around city and state legislation concerning residential housing, short-term rentals, and zoning.
The dataset is provided in CSV format, including new_orleans_airbnb_listings.csv
and reviews.csv
. Specific total row or record counts are not available within the provided information.
However, details on value distribution for certain columns are present:
* host_id
: 5,752 unique values.
* host_location
: 5,487 unique values, with 68% reporting 'New Orleans, Louisiana, United States', 12% from 'US', and 20% from 'Other'.
* host_response_time
: 61% of hosts respond 'within an hour', with 26% being null.
* host_response_rate
: 58% of hosts have a '100%' response rate, with 26% being null.
* host_acceptance_rate
: 28% of hosts have a '100%' acceptance rate, with 24% being null.
* host_since
dates range from 13 December 2008 to 20 October 2021.
This dataset is ideal for: * Predicting short-term rental charges in New Orleans based on location and amenities. * Describing the 'vibe' of each neighbourhood using listing descriptions, suitable for Natural Language Processing (NLP) tasks. * Identifying the most common amenities offered in short-term rental listings. * Determining factors that contribute to popular or highly-rated listings. * Analysing differences in favourability among different New Orleans neighbourhoods. * Exploratory Data Analysis (EDA) and Regression modelling. * Researching the impact of short-term rentals on housing affordability and community dynamics.
The dataset focuses on New Orleans, Louisiana, United States. It covers a time range for host activity from 13 December 2008 to 20 October 2021, with the data compilation date being 7 November 2021. While not directly demographic, the context addresses concerns about gentrification and the displacement of longtime residents in the city.
CC-BY
Original Data Source: New Orleans Airbnb Listings and Reviews
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Listings per region on Airbnb declined from 2020 to 2021. Globally in 2021, there were a total of 12.7 million listings.