Given dataset of Diamonds with features such as Cut, Carat, Clarity etc. I have used libraries such as Pandas, Numpy, Matplotlib, Seaborn to Analyse and Estimate the Price of Diamonds based on the features. Using Scikit-Learn , implemented Algorithms to increase the effective R2 score.
Last updated Jul 5, 2023
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Diamonds-In-Depth-Analysis
Diamonds- Given dataset of Diamonds with features such as Cut, Carat, Clarity etc.
- I have used Libraries such as Pandas, Numpy, Matplotlib, Seaborn to Analyse and Estimate the Price of Diamonds based on the features.
- Used Scikit-Learn to implement Regression models to improve the R2 Score.
- Analyzed and Visualized both the distribution of Categorical and Numerical Features.
- Used StandardScaler to Scale the numerical values.
- Finally, I have Tuned the Parameters with the help of GridSearchCV.
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