Book Image

Applied Supervised Learning with R

By : Karthik Ramasubramanian, Jojo Moolayil
Book Image

Applied Supervised Learning with R

By: Karthik Ramasubramanian, Jojo Moolayil

Overview of this book

R provides excellent visualization features that are essential for exploring data before using it in automated learning. Applied Supervised Learning with R helps you cover the complete process of employing R to develop applications using supervised machine learning algorithms for your business needs. The book starts by helping you develop your analytical thinking to create a problem statement using business inputs and domain research. You will then learn different evaluation metrics that compare various algorithms, and later progress to using these metrics to select the best algorithm for your problem. After finalizing the algorithm you want to use, you will study the hyperparameter optimization technique to fine-tune your set of optimal parameters. The book demonstrates how you can add different regularization terms to avoid overfitting your model. By the end of this book, you will have gained the advanced skills you need for modeling a supervised machine learning algorithm that precisely fulfills your business needs.
Table of Contents (12 chapters)
Applied Supervised Learning with R
Preface

Introduction


In the previous chapter, we studied model improvements and explored the various techniques within hyperparameter tuning to improve model performance and develop the best model for a given use case. The next step is to deploy the machine learning model into production so that it can be easily consumed by or integrated into a large software product.

Most data science professionals assume that the process of developing machine learning models ends with hyperparameter tuning when we have the best model in place. In reality, the value and impact delivered by a machine learning model is limited (mostly futile) if it isn't deployed and (or) integrated with other software services/products into a large tech ecosystem. Machine learning and software engineering are definitely two separate disciplines. Most data scientists have limited proficiency in understanding the software engineering ecosystem and, similarly, software engineers have a limited understanding of the machine learning field...