- The Kaggle dataset on California Housing Price was used to perform the primary EDA and to build linear, ridge, lasso and elasticnet machine learning regression models.
- Various iterations were done like scaling and normalizing the data, tuning the model parameters using GridSearchCV to evaluate its effects on the models.
- An accuracy of 68% was achieved in predicting location specific housing prices in California state with Ridge Regression model.
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