Statistical Machine Learning for Engineering with Applications Statistical Machine Learning for Engineering with Applications
Lecture Notes in Statistics

Statistical Machine Learning for Engineering with Applications

    • $109.99
    • $109.99

Publisher Description

This book offers a leisurely introduction to the concepts and methods of machine learning. Readers will learn about classification trees, Bayesian learning, neural networks and deep learning, the design of experiments, and related methods. For ease of reading, technical details are avoided as far as possible, and there is a particular emphasis on applicability, interpretation, reliability and limitations of the data-analytic methods in practice. To cover the common availability and types of data in engineering, training sets consisting of independent as well as time series data are considered. To cope with the scarceness of data in industrial problems, augmentation of training sets by additional artificial data, generated from physical models, as well as the combination of machine learning and expert knowledge of engineers are discussed.

The methodological exposition is accompanied by several detailed case studies based on industrial projects covering a broad range of engineering applications from vehicle manufacturing, process engineering and design of materials to optimization of production processes based on image analysis.

The focus is on fundamental ideas, applicability and the pitfalls of machine learning in industry and science, where data are often scarce. Requiring only very basic background in statistics, the book is ideal for self-study or short courses for engineering and science students.

GENRE
Science & Nature
RELEASED
2024
October 8
LANGUAGE
EN
English
LENGTH
400
Pages
PUBLISHER
Springer Nature Switzerland
SELLER
Springer Nature B.V.
SIZE
32.4
MB
Statistics of Financial Markets Statistics of Financial Markets
2019
Statistics of Financial Markets Statistics of Financial Markets
2015
Statistics of Financial Markets Statistics of Financial Markets
2010
Statistics of Financial Markets Statistics of Financial Markets
2008
Linear Dimensionality Reduction Linear Dimensionality Reduction
2025
Optimal Mixture Experiments Optimal Mixture Experiments
2014
Proceedings of the Fourth Seattle Symposium in Biostatistics: Clinical Trials Proceedings of the Fourth Seattle Symposium in Biostatistics: Clinical Trials
2012
Multivariate Nonparametric Methods with R Multivariate Nonparametric Methods with R
2010
Statistical Challenges in Modern Astronomy V Statistical Challenges in Modern Astronomy V
2012
Inference for Change Point and Post Change Means After a CUSUM Test Inference for Change Point and Post Change Means After a CUSUM Test
2007