Book Image

Training Systems using Python Statistical Modeling

By : Curtis Miller
Book Image

Training Systems using Python Statistical Modeling

By: Curtis Miller

Overview of this book

Python's ease-of-use and multi-purpose nature has made it one of the most popular tools for data scientists and machine learning developers. Its rich libraries are widely used for data analysis, and more importantly, for building state-of-the-art predictive models. This book is designed to guide you through using these libraries to implement effective statistical models for predictive analytics. You’ll start by delving into classical statistical analysis, where you will learn to compute descriptive statistics using pandas. You will focus on supervised learning, which will help you explore the principles of machine learning and train different machine learning models from scratch. Next, you will work with binary prediction models, such as data classification using k-nearest neighbors, decision trees, and random forests. The book will also cover algorithms for regression analysis, such as ridge and lasso regression, and their implementation in Python. In later chapters, you will learn how neural networks can be trained and deployed for more accurate predictions, and understand which Python libraries can be used to implement them. By the end of this book, you will have the knowledge you need to design, build, and deploy enterprise-grade statistical models for machine learning using Python and its rich ecosystem of libraries for predictive analytics.
Table of Contents (9 chapters)

Logistic regression

In this section, we will look at another linear classifierlogistic regression.

Logistic regression is also referred to as logit models. In this section, we will look at the basic idea of prediction using logistic regression and how to train and use these models. Our applications still involve the Titanic dataset. So, let's get right into it:

  1. First, we will import all the required functions:
  1. Then, we're going to load in the dataset:

This results in the following output:

Some further comments about logistic regressionthis is something that's not just common in machine learning. It's also a generally popular statistical model for regressions so that you can predict probabilities, so it's no wonder that this type of regression has been around for a long time. It has appeared in fields such as economics and medicine...