Book Image

Statistics for Machine Learning

By : Pratap Dangeti
Book Image

Statistics for Machine Learning

By: Pratap Dangeti

Overview of this book

Complex statistics in machine learning worry a lot of developers. Knowing statistics helps you build strong machine learning models that are optimized for a given problem statement. This book will teach you all it takes to perform the complex statistical computations that are required for machine learning. You will gain information on the statistics behind supervised learning, unsupervised learning, reinforcement learning, and more. You will see real-world examples that discuss the statistical side of machine learning and familiarize yourself with it. You will come across programs for performing tasks such as modeling, parameter fitting, regression, classification, density collection, working with vectors, matrices, and more. By the end of the book, you will have mastered the statistics required for machine learning and will be able to apply your new skills to any sort of industry problem.
Table of Contents (16 chapters)
Title Page
Credits
About the Author
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Comparison between AdaBoosting versus gradient boosting


After understanding both AdaBoost and gradient boost, readers may be curious to see the differences in detail. Here, we are presenting exactly that to quench your thirst!

The gradient boosting classifier from the scikit-learn package has been used for computation here:

# Gradientboost Classifier
>>> from sklearn.ensemble import GradientBoostingClassifier

Parameters used in the gradient boosting algorithms are as follows. Deviance has been used for loss, as the problem we are trying to solve is 0/1 binary classification. The learning rate has been chosen as 0.05, number of trees to build is 5000 trees, minimum sample per leaf/terminal node is 1, and minimum samples needed in a bucket for qualification for splitting is 2:

>>> gbc_fit = GradientBoostingClassifier (loss='deviance', learning_rate=0.05, n_estimators=5000, min_samples_split=2, min_samples_leaf=1, max_depth=1, random_state=42 ) 

>>> gbc_fit.fit(x_train...