This is a tutorial for scikit learn in Python. It covers basic concepts as well as use cases.
Agenda:
- Loading datasets
- Splitting dataset
- Preprocessing
- Encoding variables into
- Intro to Estimators interface
- Feature scalling
- Support Vector Machines (SVMs)
- Intro & Application to SVMs
- Plotting
- Model Evaluation
- Evaluation metrics
- Naive evaluation
- K-fold evaluation with hyperparameter grid search
A few words before starting:
- I am not an expert in the topic (disclaimer).
- Thanks to Dimis Koimtzoglou for advices during the preparation.
Author: Adam Zika, JADS
** To follow the tutorial, follow the file of: Python&Scikit - complete use case with SVM.ipynb **