Machine Learning in Data Processing Machine Learning in Data Processing
Forum for Interdisciplinary Mathematics

Machine Learning in Data Processing

    • US$44.99
    • US$44.99

출판사 설명

Machine learning has become a cornerstone of modern data-driven science and technology. For mathematics students and researchers, understanding the mathematical foundations behind machine learning is essential, even if they never work directly with real-world datasets.

This book provides a rigorous yet accessible introduction to the core mathematical ideas that underpin machine learning. Topics such as linear and nonlinear regression, regularization techniques, and the fundamentals of neural networks are explained in detail from a clear mathematical perspective.

Unlike many existing texts that emphasize coding and practical implementation, this book focuses on theoretical results and conceptual understanding. It is designed for readers who want to grasp the mathematics behind machine learning without writing code.

Who should read this book?

Mathematics students and researchers interested in machine learning but with little programming experience.
Scientists and engineers who have applied machine learning in practice and now seek a deeper understanding of its mathematical foundations.

장르
과학 및 자연
출시일
2026년
5월 19일
언어
EN
영어
길이
132
페이지
출판사
Springer Nature Switzerland
판매자
Springer Nature B.V.
크기
20.9
MB
An Introduction to Ultrametric Summability Theory An Introduction to Ultrametric Summability Theory
2026년
Delay Differential Equations and Applications to Biology Delay Differential Equations and Applications to Biology
2026년
Equilibrium Problems Equilibrium Problems
2025년
Finite Difference Methods for Compressible Two-Fluid Dynamics Finite Difference Methods for Compressible Two-Fluid Dynamics
2025년
Modeling of Discrete and Continuous Systems Modeling of Discrete and Continuous Systems
2025년
Concepts of Fuzzy Mathematics Concepts of Fuzzy Mathematics
2024년