Detalhes do Livro
Formato
Brochura
Páginas
344
Idioma
Inglês
Publicado
Dec 19, 2022
Editora
Springer
ISBN-10
9811951721
ISBN-13
9789811951725
Descrição
This practical guide delves into the intricacies of hyperparameter tuning within the realms of machine and deep learning, using R as the primary tool. The authors, Eva Bartz, Thomas Bartz-Beielstein, Martin Zaefferer, and Olaf Mersmann, present a structured approach that equips readers with the skills necessary to optimize their models effectively. The book emphasizes practical applications, showcasing numerous hands-on examples that help demystify the process of hyperparameter adjustment.
Through comprehensive explanations and real-world scenarios, readers will gain insights into best practices and innovative techniques. This resource is ideal for data scientists, researchers, and practitioners looking to sharpen their expertise in hyperparameter tuning and enhance their machine learning capabilities. The open access nature ensures that this valuable knowledge is widely available for those eager to learn and improve their skills in this critical area of study.
Through comprehensive explanations and real-world scenarios, readers will gain insights into best practices and innovative techniques. This resource is ideal for data scientists, researchers, and practitioners looking to sharpen their expertise in hyperparameter tuning and enhance their machine learning capabilities. The open access nature ensures that this valuable knowledge is widely available for those eager to learn and improve their skills in this critical area of study.