Skip to content

easyfmxu/AirbnbScrape

 
 

Repository files navigation

AirbnbScrape

Python Function To Scrape Airbnb

Purpose: As a host of airbnb, we wanted to optimize the price of our listing, and wanted to understand things like:

  • How other people priced around me, relative to dimensions such as amenities, reviews, instant booking status, etc?
  • Can I learn something about looking at other properties who are "successful" on airbnb - with success being defined as having many reviews and able to charge competitive prices?
  • Optimize the price for our listings by studying the data of similar properties around us
  • Learn interesting things from outliers.

We wanted to be able to study this data, visualize it and see if we could glean additional insights than what is available on airbnb.

###Table of Contents ####Scraping

  • ScrapingAirbnb.py: this is the code that was used to scrape Airbnb.com this code is very modular and can be re-used to scrape airbnb data for any location.

####Analysis

  • DataCleanAirbnb.py: this file contains supporting functions for AirbnbWrapup.ipyb. Used to clean the dataset and parse/remove features as appropriate.
  • DummyOneHot.py: this file contains items that are located in AirbnbWrapup.ipynb. Used to dummy code categorical variables.

###How To Use The Scraping Code (ScrapingAirbnb.py): The main functions are:

  1. IterateMainPage() this function takes in a location string, and page limit as a parameter and downloads a list of dictionaries which correspond to all of the distinct listings for that location. For example, calling IterateMainPage('Cambridge--MA', 10) will scrape all of the distinct listings that appear on pages 1-10 of the page listings for that location. The output from this function will then be a list of dictionaries with each dictionary item corresponding to one unique listing on each page. The location string is in the format of 'City--State', as that is how the URL is structured.

  2. iterateDetail() this reads in the output of the function IterateMainPage() and visits each specific listing to get mroe detailed information. If more detailed information is found, then the dictionary is updated to contain more values.

  3. writeToCSV() this function takes care of writing the output to a csv file.

Example of how to run this code:

    #Iterate Through Main Page To Get Results
    MainResults = IterateMainPage('Cambridge--MA', 1)
    
    #Take The Main Results From Previous Step and Iterate Through Each Listing
    #To add more detail
    DetailResults = iterateDetail(MainResults)
    
    #Write Out Results To CSV File, using function I defined
    writeToCSV(DetailResults, 'CambridgeResults.csv')

About

Python Function To Scrape Airbnb

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%