Machine learning model to predicted rent of houses using potential features and LinearRegression, on dataset provided by StreetEasy
The house rent dataset was provided by StreetEasy, collected from the New York cities of manhattan, queens, brooklyn all of these data are stored as comma seprated values
The features with positive correlation were extracted and made as one of the features columns The target feature was extracted from the dataframe and made as the target columns
To Provide unbaised validation, the dataset is split into test and train data with train 80% and test 20%
Mutiple LinearRegression was used to train the model The trained model was saved using pickle