Book Image

Hands-On Predictive Analytics with Python

By : Alvaro Fuentes
Book Image

Hands-On Predictive Analytics with Python

By: Alvaro Fuentes

Overview of this book

Predictive analytics is an applied field that employs a variety of quantitative methods using data to make predictions. It involves much more than just throwing data onto a computer to build a model. This book provides practical coverage to help you understand the most important concepts of predictive analytics. Using practical, step-by-step examples, we build predictive analytics solutions while using cutting-edge Python tools and packages. The book's step-by-step approach starts by defining the problem and moves on to identifying relevant data. We will also be performing data preparation, exploring and visualizing relationships, building models, tuning, evaluating, and deploying model. Each stage has relevant practical examples and efficient Python code. You will work with models such as KNN, Random Forests, and neural networks using the most important libraries in Python's data science stack: NumPy, Pandas, Matplotlib, Seaborn, Keras, Dash, and so on. In addition to hands-on code examples, you will find intuitive explanations of the inner workings of the main techniques and algorithms used in predictive analytics. By the end of this book, you will be all set to build high-performance predictive analytics solutions using Python programming.
Table of Contents (11 chapters)

Dataset Understanding – Exploratory Data Analysis

In this chapter, we introduce and explain the main techniques of exploratory data analysis (EDA). We start by explaining the general goal of this stage of the predictive analytics process, and discuss how we accomplish this.

A natural and common way to classify EDA techniques is by the number of variables involved in the analysis—one, two, or more than two. Hence, this chapter has sections on univariate, bivariate, and multivariate analysis. Within the univariate and bivariate types of analysis, we have different numerical and graphical techniques that depend on the type of feature we are working with.

In this chapter, we use the diamond prices dataset to introduce and illustrate the main techniques of univariate and bivariate EDA. We will provide examples of how to produce the main visualizations used in analytics...