Rental Bike Sharing is the process by which
bicycles are procured on several basis- hourly, weekly,
membership-wise, etc. This phenomenon has seen its stock
rise to considerable levels due to a global effort towards
reducing the carbon footprint, leading to climate change,
unprecedented natural disasters, ozone layer depletion,
and other environmental anomalies.
In our project, we chose to analyse a dataset
pertaining to Rental Bike Demand from South Korean
city of Seoul, comprising of climatic variables like
Temperature, Humidity, Rainfall, Snowfall, Dew Point
Temperature, and others. For the available raw data,
firstly, a through pre-processing was done after which a
Here, hourly rental bike count is the regress and. To an
extent, our linear model was able to explain the factors
orchestrating the hourly demand of rental bikes.
Keywords : Data Mining, Linear Regression, Correlation Analysis, Bike Sharing Demand Prediction, Carbon Footprint.