Book Details
Format
Kindle
Pages
507
Language
English
Published
Jan 1, 2023
Publisher
Springer
ISBN-10
9811951705
ISBN-13
9789811951701
Description
In this comprehensive guide, readers are introduced to the world of hyperparameter tuning within machine and deep learning using R. The authors expertly share their knowledge through practical examples, making the complexities of this advanced topic accessible to those eager to enhance their skills. Throughout the chapters, the emphasis is on real-world applications, ensuring that learners can grasp and implement the concepts effectively.
The book delves into various techniques and methodologies, equipping readers with tools and strategies to optimize their models. It caters to both beginners and experienced practitioners, allowing them to understand the nuances and importance of hyperparameter tuning in achieving better performance from their algorithms.
By blending theory with practice, the text not only educates but also inspires readers to explore the vast potential of machine learning in various fields. With a focus on R, it serves as an essential resource for data scientists looking to refine their approach and improve their predictive capabilities.
The book delves into various techniques and methodologies, equipping readers with tools and strategies to optimize their models. It caters to both beginners and experienced practitioners, allowing them to understand the nuances and importance of hyperparameter tuning in achieving better performance from their algorithms.
By blending theory with practice, the text not only educates but also inspires readers to explore the vast potential of machine learning in various fields. With a focus on R, it serves as an essential resource for data scientists looking to refine their approach and improve their predictive capabilities.