I have created this repositry as part of my kaggle journey by playing around with a dataset and trying to build a proper flow of various tasks used in a typical machine learning algorithms
https://www.kaggle.com/c/home-data-for-ml-course/data
or can also find the dataset here https://github.com/vishalbansal-1650/Kaggle-House-Price-Prediction/tree/main/Data
Here are the steps which i have performed in this notebook
5.1 Train-test split
5.2 Feature Scaling
5.3 Ensemble Algorithms
A) Bagging
B) AdaBoosting
C) Random Forest
D) Gradient Boosting
E) XGBoost
F) LightGBM
G) CatBoost
5.4 Blending
https://github.com/vishalbansal-1650/Kaggle-House-Price-Prediction/blob/main/submission/submission.csv
A.) Will add weight optimization function for blending
B.) Use Feature Selection and train model on those selected features