Buch, Englisch, 422 Seiten, Format (B × H): 215 mm x 285 mm, Gewicht: 1336 g
Reihe: Machine Learning: Foundations, Methodologies, and Applications
An Algorithmic Exploration
Buch, Englisch, 422 Seiten, Format (B × H): 215 mm x 285 mm, Gewicht: 1336 g
Reihe: Machine Learning: Foundations, Methodologies, and Applications
ISBN: 978-981-969688-8
Verlag: Springer
This textbook offers a comprehensive and accessible introduction to machine learning with the Julia programming language. It bridges mathematical theory and real-world practice, guiding readers through both foundational concepts and advanced algorithms. Covering topics from essential principles like Kullback–Leibler divergence and eigen-analysis to cutting-edge techniques such as deep transfer learning and differential privacy, each chapter delivers clear explanations and detailed algorithmic treatments. Sample code accompanies every major topic, enabling hands-on learning and faster implementation.
By leveraging Julia’s powerful machine learning ecosystem—including libraries such as Flux.jl, MLJ.jl, and more—this book empowers readers to build robust, state-of-the-art machine learning models.
Ideal for students, researchers, and professionals alike, this textbook is designed for those seeking a solid theoretical foundation in machine learning, along with deep algorithmic insight and practical problem-solving inspiration.
Zielgruppe
Lower undergraduate
Autoren/Hrsg.
Fachgebiete
- Mathematik | Informatik Mathematik Stochastik
- Mathematik | Informatik EDV | Informatik Informatik Künstliche Intelligenz Maschinelles Lernen
- Mathematik | Informatik EDV | Informatik Informatik Mathematik für Informatiker
- Mathematik | Informatik EDV | Informatik Programmierung | Softwareentwicklung Programmier- und Skriptsprachen
Weitere Infos & Material
Introduction.- Metrics and Divergences.- Clustering.- Online Clustering.- Dimension Reduction.- Bayesian classification.- Support Vector Machines = Linear Machines + Kernels.- Tree and Forest: Divide-and-Conquer.- Regression and Model Selection.- Ensemble Methods.- Neural networks.- Convolutional neural networks.- Autoencoders.- Generative adversarial networks.- Transfer Learning.- Federated Learning.




