Chapter
Licensed
Unlicensed
Requires Authentication
CHAPTER 5 Systems Theory Foundations of Machine Learning
-
P. G. Madhavan
You are currently not able to access this content.
You are currently not able to access this content.
Chapters in this book
- Frontmatter i
- Contents vii
- Preface xi
- About the Author xiii
-
PART I Machine Learning from Multiple Perspectives
- CHAPTER 1 Overview of Data Science 3
- CHAPTER 2 Introduction to Machine Learning 17
- CHAPTER 3 Systems Theory, Linear Algebra, and Analytics Basics 37
- CHAPTER 4 “Modern” Machine Learning 55
-
PART II Systems Analytics
- CHAPTER 5 Systems Theory Foundations of Machine Learning 91
- CHAPTER 6 State Space Model and Bayes Filter 101
- CHAPTER 7 The Kalman Filter for Adaptive Machine Learning 113
- CHAPTER 8 The Need for Dynamical Machine Learning: The Bayesian Exact Recursive Estimation 125
- CHAPTER 9 Digital Twins 133
- Epilogue A New Random Field Theory 149
- Index 155
Chapters in this book
- Frontmatter i
- Contents vii
- Preface xi
- About the Author xiii
-
PART I Machine Learning from Multiple Perspectives
- CHAPTER 1 Overview of Data Science 3
- CHAPTER 2 Introduction to Machine Learning 17
- CHAPTER 3 Systems Theory, Linear Algebra, and Analytics Basics 37
- CHAPTER 4 “Modern” Machine Learning 55
-
PART II Systems Analytics
- CHAPTER 5 Systems Theory Foundations of Machine Learning 91
- CHAPTER 6 State Space Model and Bayes Filter 101
- CHAPTER 7 The Kalman Filter for Adaptive Machine Learning 113
- CHAPTER 8 The Need for Dynamical Machine Learning: The Bayesian Exact Recursive Estimation 125
- CHAPTER 9 Digital Twins 133
- Epilogue A New Random Field Theory 149
- Index 155