Machine Learning for Practical Decision Making Machine Learning for Practical Decision Making
International Series in Operations Research & Management Science

Machine Learning for Practical Decision Making

A Multidisciplinary Perspective with Applications from Healthcare, Engineering and Business Analytics

    • USD 109.99
    • USD 109.99

Descripción editorial

This book provides a hands-on introduction to Machine Learning (ML) from a multidisciplinary perspective that does not require a background in data science or computer science. It explains ML using simple language and a straightforward approach guided by real-world examples in areas such as health informatics, information technology, and business analytics. The book will help readers understand the various key algorithms, major software tools, and their applications. Moreover, through examples from the healthcare and business analytics fields, it demonstrates how and when ML can help them make better decisions in their disciplines.

The book is chiefly intended for undergraduate and graduate students who are taking an introductory course in machine learning. It will also benefit data analysts and anyone interested in learning ML approaches.

GÉNERO
Negocios y finanzas personales
PUBLICADO
2022
29 de noviembre
IDIOMA
EN
Inglés
EXTENSIÓN
482
Páginas
EDITORIAL
Springer International Publishing
VENDEDOR
Springer Nature B.V.
TAMAÑO
131.9
MB
Beyond Tech Fixes Beyond Tech Fixes
2025
Analytics in Healthcare Analytics in Healthcare
2019
Outsourcing Using Operations Research and Management Science Methods Outsourcing Using Operations Research and Management Science Methods
2025
Outsourcing Outsourcing
2025
Machine Learning Technologies on Energy Economics and Finance Machine Learning Technologies on Energy Economics and Finance
2025
Machine Learning Technologies on Energy Economics and Finance Machine Learning Technologies on Energy Economics and Finance
2025
University-Industry Collaboration University-Industry Collaboration
2025
The Unaffordable Price of Static Decision-making Models The Unaffordable Price of Static Decision-making Models
2025