Book Image

Machine Learning for Data Mining

By : Jesus Salcedo
Book Image

Machine Learning for Data Mining

By: Jesus Salcedo

Overview of this book

Machine learning (ML) combined with data mining can give you amazing results in your data mining work by empowering you with several ways to look at data. This book will help you improve your data mining techniques by using smart modeling techniques. This book will teach you how to implement ML algorithms and techniques in your data mining work. It will enable you to pair the best algorithms with the right tools and processes. You will learn how to identify patterns and make predictions with minimal human intervention. You will build different types of ML models, such as the neural network, the Support Vector Machines (SVMs), and the Decision tree. You will see how all of these models works and what kind of data in the dataset they are suited for. You will learn how to combine the results of different models in order to improve accuracy. Topics such as removing noise and handling errors will give you an added edge in model building and optimization. By the end of this book, you will be able to build predictive models and extract information of interest from the dataset
Table of Contents (7 chapters)

What this book covers

Chapter 1, Introducing Machine Learning Predictive Models, introduces you to the theory behind predictive models, looking at how they work and providing an insight into types of predictive modeling, such as the neural network model, which is explained in brief in this chapter.

Chapter 2, Getting Started with Machine Learning, introduces you to the implementation of a neural network model, and gives an insight into the implementation of Support Vector Machines (SVMs) as well.

Chapter 3, Understanding Models, explains different types of models and the situations in which each of them should ideally be used.

Chapter 4, Improving Individual Models, shows you different ways in which we can improve our models. This chapter will show you four methods to improve the accuracy of your model.

Chapter 5, Advanced Ways of Improving Models, focuses on combining different models in different ways to get increasingly better results. In this chapter, we will see how a certain part of a dataset, which doesn't contribute much to the results of a neural network model, performs very well on the CHAID and C5.0 decision tree models. We will also see how to model the errors to prepare our models.