Skip to content

Latest commit

 

History

History
22 lines (14 loc) · 1.38 KB

README.md

File metadata and controls

22 lines (14 loc) · 1.38 KB

Florence Airbnb

Research on earnings' drivers for AirBNB-listed properties in Florence, Italy (until 2019). You can find here the final report. The project follows the guidelines CRISP-DM.

We want to investigate how we could invest capital into a flat to rent for turists. To do so, we want to try to answer the following points:

  • Understand Airbnb businesses in Florence: popular areas and highest occupancy, and mostly consolidated vs new listings over time.
  • Relate the listing offer to our business orientation goal: listings are of any types, whereas we are interested in exploring small-to-medium-sized flats
  • Investigate the characteristics of flats in relation to prices (how many guests can accept, utilities etc.)

Summary

The process is executed in a Jupyter Notebook, where you can find:

  • Data preparation. Data is taken from Inside Airbnb, file: listings.csv.gz. Date 22 June 2019). Missing values and feature selection is processed to simplify the dataset and run an exploratory experiment.
  • Data analysis. Prices and
  • Data modelling
  • Data visualization

Installation

The Notebook requires Python 3.7 installed on your machine to run. Dependencies are include in the Anaconda environment file requirements.yml