| Record Type: |
Electronic resources
: Monograph/item
|
| Title/Author: |
Information-driven machine learning/ by Gerald Friedland. |
| Reminder of title: |
data science as an engineering discipline / |
| Author: |
Friedland, Gerald. |
| Published: |
Cham :Springer International Publishing : : 2024., |
| Description: |
xxii, 267 p. :ill. (some col.), digital ;24 cm. |
| [NT 15003449]: |
Preface -- 1 Introduction -- 2 The Automated Scientific Process -- 3 The (Black Box) Machine Learning Process -- 4 Information Theory -- 5 Capacity -- 6 The Mechanics of Generalization -- 7 Meta-Math: Exploring the Limits of Modeling -- 8 Capacity of Neural Networks -- 8 Capacity of Neural Networks -- 10 Capacities of some other Machine Learning Methods -- 11 Data Collection and Preparation -- 12 Measuring Data Sufficiency -- 13 Machine Learning Operations -- 14 Explainability -- 15 Repeatability and Reproducibility -- 16 The Curse of Training and the Blessing of High Dimensionality -- 16 The Curse of Training and the Blessing of High Dimensionality -- Appendix A Recap: The Logarithm -- Appendix B More on Complexity -- Appendix C Concepts Cheat Sheet -- Appendix D A Review Form that Promotes Reproducibility -- List of Illustrations -- Bibliography. |
| Contained By: |
Springer Nature eBook |
| Subject: |
Machine learning. - |
| Online resource: |
https://doi.org/10.1007/978-3-031-39477-5 |
| ISBN: |
9783031394775 |