Interpretable Machine Learning Applications: Part 1
Completed by Chris San Juan
February 29, 2024
1 hours (approximately)
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What you will learn
How to select and compare different prediction models (classification regressors) for a real world dataset (FIFA 2018 Soccer World Cup Statistics).
How to extract the most important features, which impact the classifiers, in a model-agnostic approach, together with caveats.
How to get an insight into the way values of the most important features impact the predictions made by the classifiers.
Skills you will gain
- Category: Model Evaluation
- Category: Feature Engineering
- Category: Machine Learning
- Category: Random Forest Algorithm
- Category: Decision Tree Learning
- Category: Data Import/Export
- Category: Responsible AI
- Category: Applied Machine Learning
- Category: Classification Algorithms

