Book Image

Data Cleaning and Exploration with Machine Learning

By : Michael Walker
Book Image

Data Cleaning and Exploration with Machine Learning

By: Michael Walker

Overview of this book

Many individuals who know how to run machine learning algorithms do not have a good sense of the statistical assumptions they make and how to match the properties of the data to the algorithm for the best results. As you start with this book, models are carefully chosen to help you grasp the underlying data, including in-feature importance and correlation, and the distribution of features and targets. The first two parts of the book introduce you to techniques for preparing data for ML algorithms, without being bashful about using some ML techniques for data cleaning, including anomaly detection and feature selection. The book then helps you apply that knowledge to a wide variety of ML tasks. You’ll gain an understanding of popular supervised and unsupervised algorithms, how to prepare data for them, and how to evaluate them. Next, you’ll build models and understand the relationships in your data, as well as perform cleaning and exploration tasks with that data. You’ll make quick progress in studying the distribution of variables, identifying anomalies, and examining bivariate relationships, as you focus more on the accuracy of predictions in this book. By the end of this book, you’ll be able to deal with complex data problems using unsupervised ML algorithms like principal component analysis and k-means clustering.
Table of Contents (23 chapters)
1
Section 1 – Data Cleaning and Machine Learning Algorithms
5
Section 2 – Preprocessing, Feature Selection, and Sampling
9
Section 3 – Modeling Continuous Targets with Supervised Learning
13
Section 4 – Modeling Dichotomous and Multiclass Targets with Supervised Learning
19
Section 5 – Clustering and Dimensionality Reduction with Unsupervised Learning

Who this book is for

I had multiple audiences in mind as I wrote this book, but I most consistently thought about a dear friend of mine who bought a Transact-SQL book 30 years ago and instantly developed great confidence in her database work, ultimately building a career around those skills. I would love it if someone just starting their career as a data scientist or analyst worked through this book and had a similar experience as my friend. More than anything else, I want you to feel good and excited about what you can do as a result of reading this book.

I also hope this book will be a useful reference for folks who have been doing this kind of work for a while. Here, I imagine someone opening the book and wondering to themselves, what are good values to use in my grid search for my logistic regression model?

In keeping with the hands-on nature of this text, every bit of output is reproducible with code in this book. I also stuck to a rule throughout, even when it was challenging. Every section, except for the conceptual sections, starts with raw data largely unchanged from the original downloaded file. You go from data file to model in each section. If you have forgotten how a particular object was created, all you will ever need to do is turn back a page or two to see.

Readers who have some knowledge of pandas and NumPy will have an easier time with some code blocks, as will folks with some knowledge of Python and scikit-learn. None of that is essential though. There are just some sections you might want to pause over longer. If you need additional instruction on doing data work with Python, my Python Data Cleaning Cookbook is a good companion book I think.