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shreya-marda/Real-estate-price-predictor

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Project for predicting the prices of real-estate

Problem statement

  • We are given the dataset of house prices with some features like number of bathrooms, number of bedrooms, etc
  • Our task is to create a model which will predict the price for any new house by looking at these features.

Getting started:

  • What is the objective?
  • What are the purpose and the benefit of the model? (expectations)

Example of its benefit: Suppose we predict the price of the house as 30L and someone is offering to sell the same house to the real estate company at 3Cr, then we have a net profit of 1.5Cr.

Steps to creating the model:

  • This is a supervised learning model as we have features and labels.
  • This is a regression problem as we need the value of the price.
  • Batch learning or Online learning: This is a batch-learning problem as we already have data to predict but online learning is where you have a pipeline from where you continuously keep getting data and your model keeps getting trained. This is a batch learning model as we already have the data for now.

Selecting a performance measure:

  • A typical performance measure for regression problems is Root Mean Square Error(RMSE)
  • RMSE is generally the preferred performance measure for regression tasks, so we choose it for this particular problem
  • Other performance measures include Meam Absolute error, Manhattan norm, etc

Checking the assumptions:

  • It is very important to check for any assumptions we might make and more important to correct them before launching the ML model.
  • We need to know that we need the prices, not the categories like expensive, cheap, etc..

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