Regression Model for Kaggle Tabular Playground Series 2021 August Using Python and XGBoost

Template Credit: Adapted from a template made available by Dr. Jason Brownlee of Machine Learning Mastery.

SUMMARY: The project aims to construct a predictive model using various machine learning algorithms and document the end-to-end steps using a template. The Kaggle Tabular Playground Series Aug 2021 dataset is a regression situation where we are trying to predict the value of a continuous variable.

INTRODUCTION: Kaggle wants to provide an approachable environment for relatively new people in their data science journey. Since January 2021, they have hosted playground-style competitions on Kaggle with fun but less complex, tabular datasets. The February dataset may be synthetic but is based on a real dataset and generated using a CTGAN. The original dataset tries to predict the loss from a loan default. Although the features are anonymized, they have properties relating to real-world features.

ANALYSIS: The performance of the preliminary XGBoost model achieved an RMSE benchmark of 7.8834. After a series of tuning trials, the refined XGBoost model processed the training dataset with a final RMSE score of 7.8463. When we applied the last model to Kaggle’s test dataset, the model achieved an RMSE score of 7.8324.

CONCLUSION: In this iteration, the XGBoost model appeared to be a suitable algorithm for modeling this dataset.

Dataset Used: Kaggle Tabular Playground Series Aug 2021 Data Set

Dataset ML Model: Regression with numerical attributes

Dataset Reference: https://www.kaggle.com/c/tabular-playground-series-aug-2021

One potential source of performance benchmarks: https://www.kaggle.com/c/tabular-playground-series-aug-2021/leaderboard

The HTML formatted report can be found here on GitHub.