Book Image

Hands-On Machine Learning with scikit-learn and Scientific Python Toolkits

By : Tarek Amr
Book Image

Hands-On Machine Learning with scikit-learn and Scientific Python Toolkits

By: Tarek Amr

Overview of this book

Machine learning is applied everywhere, from business to research and academia, while scikit-learn is a versatile library that is popular among machine learning practitioners. This book serves as a practical guide for anyone looking to provide hands-on machine learning solutions with scikit-learn and Python toolkits. The book begins with an explanation of machine learning concepts and fundamentals, and strikes a balance between theoretical concepts and their applications. Each chapter covers a different set of algorithms, and shows you how to use them to solve real-life problems. You’ll also learn about various key supervised and unsupervised machine learning algorithms using practical examples. Whether it is an instance-based learning algorithm, Bayesian estimation, a deep neural network, a tree-based ensemble, or a recommendation system, you’ll gain a thorough understanding of its theory and learn when to apply it. As you advance, you’ll learn how to deal with unlabeled data and when to use different clustering and anomaly detection algorithms. By the end of this machine learning book, you’ll have learned how to take a data-driven approach to provide end-to-end machine learning solutions. You’ll also have discovered how to formulate the problem at hand, prepare required data, and evaluate and deploy models in production.
Table of Contents (18 chapters)
1
Section 1: Supervised Learning
8
Section 2: Advanced Supervised Learning
13
Section 3: Unsupervised Learning and More

Exploring more ensembles

The main ensemble techniques are the ones we have seen so far. The following ones are also good to know about and can be useful for some peculiar cases.

Voting ensembles

Sometimes, we have a number of good estimators, each with its own mistakes. Our objective is not to mitigate their bias or variance, but to combine their predictions in the hope that they don't all make the same mistakes. In these cases, VotingClassifier and VotingRegressor could be used. You can give a higher preference to some estimators versus the others by adjusting the weights hyperparameter. VotingClassifier has different voting strategies, depending on whether the predicted class labels are to be used or whether the predicted probabilities should be used instead.

Stacking ensembles

Rather than voting, you can combine the predictions of multiple estimators by adding an extra one that uses their predictions as input. This strategy is known as...