Book Image

MATLAB for Machine Learning - Second Edition

By : Giuseppe Ciaburro
Book Image

MATLAB for Machine Learning - Second Edition

By: Giuseppe Ciaburro

Overview of this book

Discover why the MATLAB programming environment is highly favored by researchers and math experts for machine learning with this guide which is designed to enhance your proficiency in both machine learning and deep learning using MATLAB, paving the way for advanced applications. By navigating the versatile machine learning tools in the MATLAB environment, you’ll learn how to seamlessly interact with the workspace. You’ll then move on to data cleansing, data mining, and analyzing various types of data in machine learning, and visualize data values on a graph. As you progress, you’ll explore various classification and regression techniques, skillfully applying them with MATLAB functions. This book teaches you the essentials of neural networks, guiding you through data fitting, pattern recognition, and cluster analysis. You’ll also explore feature selection and extraction techniques for performance improvement through dimensionality reduction. Finally, you’ll leverage MATLAB tools for deep learning and managing convolutional neural networks. By the end of the book, you’ll be able to put it all together by applying major machine learning algorithms in real-world scenarios.
Table of Contents (17 chapters)
Free Chapter
1
Part 1: Getting Started with Matlab
4
Part 2: Understanding Machine Learning Algorithms in MATLAB
9
Part 3: Machine Learning in Practice

Understanding clustering – basic concepts and methods

Clustering is a fundamental concept in data analysis, aiming to identify meaningful groupings or patterns within a dataset. It involves the partitioning of data points into distinct clusters based on their similarity or proximity to each other. In both clustering and classification, our goal is to discover the underlying rules that enable us to assign observations to the correct class. However, clustering differs from classification as it requires identifying a meaningful subdivision of classes as well. In classification, we benefit from the target variable, which provides the classification information in the training set. In contrast, clustering lacks such additional information, necessitating the deduction of classes by analyzing the spatial distribution of the data. Dense areas in the data correspond to groups of similar observations. If we can identify observations that are like each other but distinct from those in...