Machine Learning for Transportation Research and Applications
Autor Yinhai Wang, Zhiyong Cui, Ruimin Keen Limba Engleză Paperback – 24 apr 2023
is designed for college or graduate-level students in transportation or closely related fields to study and understand fundamentals in machine learning. Readers will learn how to develop and apply various types of machine learning models to transportation-related problems. Example applications include traffic sensing, data-quality control, traffic prediction, transportation asset management, traffic-system control and operations, and traffic-safety analysis.
- Introduces fundamental machine learning theories and methodologies
- Presents state-of-the-art machine learning methodologies and their incorporation into transportation domain knowledge
- Includes case studies or examples in each chapter that illustrate the application of methodologies and techniques for solving transportation problems
- Provides practice questions following each chapter to enhance understanding and learning
- Includes class projects to practice coding and the use of the methods
Preț: 667.97 lei
Preț vechi: 915.02 lei
-27% Nou
Puncte Express: 1002
Preț estimativ în valută:
127.85€ • 133.25$ • 106.43£
127.85€ • 133.25$ • 106.43£
Carte tipărită la comandă
Livrare economică 06-20 ianuarie 25
Preluare comenzi: 021 569.72.76
Specificații
ISBN-13: 9780323961264
ISBN-10: 0323961266
Pagini: 252
Dimensiuni: 152 x 229 x 16 mm
Greutate: 0.34 kg
Editura: ELSEVIER SCIENCE
ISBN-10: 0323961266
Pagini: 252
Dimensiuni: 152 x 229 x 16 mm
Greutate: 0.34 kg
Editura: ELSEVIER SCIENCE
Public țintă
Researchers and grad students in transportation and transportation engineeringPractitioners in transportation
Cuprins
Part One: Overview 1. General Introduction and Overview 2. Fundamental Mathematics 3. Machine Learning Basics
Part Two: Methodologies and Applications 4. Classical ML Methods 5. Convolutional Neural Network 6. Graph Neural Network 7. Sequence Modeling 8. Probabilistic Models 9. Reinforcement Learning 10. Generative Models 11. Meta/Transfer Learning
Part Three: Future Research and Applications The Future of Transportation and AI
Part Two: Methodologies and Applications 4. Classical ML Methods 5. Convolutional Neural Network 6. Graph Neural Network 7. Sequence Modeling 8. Probabilistic Models 9. Reinforcement Learning 10. Generative Models 11. Meta/Transfer Learning
Part Three: Future Research and Applications The Future of Transportation and AI