Book Image

Practical Data Science with Python

By : Nathan George
Book Image

Practical Data Science with Python

By: Nathan George

Overview of this book

Practical Data Science with Python teaches you core data science concepts, with real-world and realistic examples, and strengthens your grip on the basic as well as advanced principles of data preparation and storage, statistics, probability theory, machine learning, and Python programming, helping you build a solid foundation to gain proficiency in data science. The book starts with an overview of basic Python skills and then introduces foundational data science techniques, followed by a thorough explanation of the Python code needed to execute the techniques. You'll understand the code by working through the examples. The code has been broken down into small chunks (a few lines or a function at a time) to enable thorough discussion. As you progress, you will learn how to perform data analysis while exploring the functionalities of key data science Python packages, including pandas, SciPy, and scikit-learn. Finally, the book covers ethics and privacy concerns in data science and suggests resources for improving data science skills, as well as ways to stay up to date on new data science developments. By the end of the book, you should be able to comfortably use Python for basic data science projects and should have the skills to execute the data science process on any data source.
Table of Contents (30 chapters)
1
Part I - An Introduction and the Basics
4
Part II - Dealing with Data
10
Part III - Statistics for Data Science
13
Part IV - Machine Learning
21
Part V - Text Analysis and Reporting
24
Part VI - Wrapping Up
28
Other Books You May Enjoy
29
Index

Machine Learning for Classification

Once our data has been prepared with some cleaning, feature selection, and feature engineering, we can begin using machine learning algorithms. As we saw in the previous chapter, machine learning falls into three broad categories: supervised, unsupervised, and reinforcement learning. Classification falls under supervised learning, since we have targets or labels in our data. For example, we will look at a credit card loan default dataset here first. This dataset has labels for each data point, indicating whether someone defaulted on a credit card payment.

We will learn the basics of classification with machine learning in this chapter using the sklearn and statsmodels packages. In this chapter, we'll cover the following topics:

  • Machine learning classification algorithms for binary and multi-class classification
  • Using machine learning classification algorithms for feature selection

Let's begin by covering some...