Book Image

The Supervised Learning Workshop - Second Edition

By : Blaine Bateman, Ashish Ranjan Jha, Benjamin Johnston, Ishita Mathur
Book Image

The Supervised Learning Workshop - Second Edition

By: Blaine Bateman, Ashish Ranjan Jha, Benjamin Johnston, Ishita Mathur

Overview of this book

Would you like to understand how and why machine learning techniques and data analytics are spearheading enterprises globally? From analyzing bioinformatics to predicting climate change, machine learning plays an increasingly pivotal role in our society. Although the real-world applications may seem complex, this book simplifies supervised learning for beginners with a step-by-step interactive approach. Working with real-time datasets, you’ll learn how supervised learning, when used with Python, can produce efficient predictive models. Starting with the fundamentals of supervised learning, you’ll quickly move to understand how to automate manual tasks and the process of assessing date using Jupyter and Python libraries like pandas. Next, you’ll use data exploration and visualization techniques to develop powerful supervised learning models, before understanding how to distinguish variables and represent their relationships using scatter plots, heatmaps, and box plots. After using regression and classification models on real-time datasets to predict future outcomes, you’ll grasp advanced ensemble techniques such as boosting and random forests. Finally, you’ll learn the importance of model evaluation in supervised learning and study metrics to evaluate regression and classification tasks. By the end of this book, you’ll have the skills you need to work on your real-life supervised learning Python projects.
Table of Contents (9 chapters)

Summary

In this chapter, we took our first big leap into constructing machine learning models and making predictions with labeled datasets. We began our analysis by looking at a variety of different ways to construct linear models, starting with the precise least squares method, which is very good when modeling small amounts of data that can be processed using the available computer memory. The performance of linear models can be improved using dummy variables, which we created from categorical variables, adding additional features and context to the model. We then used linear regression analysis with a polynomial model to further improve performance, fitting a more natural curve to the dataset, and we investigated other non-linear feature engineering with the addition of sine and cosine series as predictors.

As a generalization from explicit linear regression, we implemented the gradient descent algorithm, which we noted, while not as precise as the least squares method (for a...