Finding optimal hyperparameters

As discussed in the previous chapter, hyperparameters are important in determining the performance of a classifier. Let's see how to extract optimal hyperparameters for SVMs.

How to do it…

  1. The full code is given in the perform_grid_search.py file that's already provided to you. We will only discuss the core parts of the recipe here. We will use cross-validation here, which we covered in the previous recipes. Once you load the data and split it into training and testing datasets, add the following to the file:
    # Set the parameters by cross-validation parameter_grid = [ {'kernel': ['linear'], 'C': [1, 10, 50, 600]}, {'kernel': ['poly'], 'degree': [2, 3]}, {'kernel': ['rbf'], 'gamma': [0.01, 0.001], 'C': [1, 10, 50, 600]}, ...

Get Python Machine Learning Cookbook now with the O’Reilly learning platform.

O’Reilly members experience books, live events, courses curated by job role, and more from O’Reilly and nearly 200 top publishers.