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Performing analyses on New York City Airbnb and developing business intelligence for both the hosts and the guests

Home Page: https://rpubs.com/phxlumens/nyc_airbnb

R 0.07% HTML 98.41% Jupyter Notebook 1.52%
r rmarkdown shiny exploratory-data-analysis linear-regression euclidean-distances decision-tree-regression random-forest-regression adaboost-learning xgboost-regression

nyc_airbnb's Introduction

Decoding Airbnb in The Big Apple

The project focuses on performing analyses on New York City Airbnb and developing business intelligence for both the hosts who are listing their properties and the guests who are using them to meet their accommodation requirements. The tasks also involve deriving insights about the Airbnb’s game changing role in the city’s rental landscape.
Following are the questions the project tries to answer which are split into three broad sections:

  • Insights into Airbnb
    • How has Airbnb presence grown over the years?
    • How costly are the Airbnb rates in the neighbourhoods across the five boroughs?
    • How badly the Covid-19 crisis affect Airbnb?
  • Insights for Hosts
    • What should be the rental value if you want to list your property with Airbnb?
    • What are the pain points that a guest finds in Airbnb?
  • Insights for Customers
    • What are the top 10 listing recommendations based on customer constraints?

About Data

The complete second-hand dataset is taken from Inside Airbnb which provides non-commercial set of tools and data that allows us to explore how Airbnb is really being used in cities around the world. The New York Airbnb dataset is compiled on 6 May 2020.
There are three data sets that were used for the analysis, namely –

  • listings.csv – file contains 106 variables and 50,246 listing information.
  • calendar.csv – file includes the daily rates of the listings up till a year.
  • reviews.csv – file includes the reviews of each listing posted by guests.

Analysis

The complete analysis report is published on RPubs.

  • Predict Rate: User interface for hosts to suggest them the price at which they can register their listing.
    Predict Rate
  • Recommend Listings: User interface for customers to view the top 10 suggestions.
    Recommend Listings

Get Help

  • code/clean.Rmd – Run the code file for generating clean datasets (only if new CSVs are downloaded in download_data folder)
  • code/run.Rmd – Run the code file for complete analysis
  • code/predict_rate/app.R – Shiny App: Predict Rate
  • code/predict_rate/app.R – Shiny App: Recommend Listings
  • code/report.Rmd – Knit the code file to generate publishable report

nyc_airbnb's People

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