Multi-Factor Models and Signal Processing Techniques : Application to Quantitative Finance (Digital Signal and Image Processing)

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Multi-Factor Models and Signal Processing Techniques : Application to Quantitative Finance (Digital Signal and Image Processing)

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  • 製本 Hardcover:ハードカバー版/ページ数 157 p.
  • 言語 ENG
  • 商品コード 9781848214194
  • DDC分類 531

Full Description

With recent outbreaks of multiple large-scale financial crises, amplified by interconnected risk sources, a new paradigm of fund management has emerged. This new paradigm leverages "embedded" quantitative processes and methods to provide more transparent, adaptive, reliable and easily implemented "risk assessment-based" practices.
This book surveys the most widely used factor models employed within the field of financial asset pricing. Through the concrete application of evaluating risks in the hedge fund industry, the authors demonstrate that signal processing techniques are an interesting alternative to the selection of factors (both fundamentals and statistical factors) and can provide more efficient estimation procedures, based on lq regularized Kalman filtering for instance.
With numerous illustrative examples from stock markets, this book meets the needs of both finance practitioners and graduate students in science, econometrics and finance.

Contents

Foreword, Rama Cont.
1. Factor Models and General Definition.
2. Factor Selection.
3. Least Squares Estimation (LSE) and Kalman Filtering (KF) for Factor Modeling: A Geometrical Perspective.
4. A Regularized Kalman Filter (rgKF) for Spiky Data.
Appendix: Some Probability Densities.

About the Authors

Serge Darolles is Professor of Finance at Paris-Dauphine University, Vice-President of QuantValley, co-founder of QAMLab SAS, and member of the Quantitative Management Initiative (QMI) scientific committee. His research interests include financial econometrics, liquidity and hedge fund analysis. He has written numerous articles, which have been published in academic journals.
Patrick Duvaut is currently the Research Director of Telecom ParisTech, France. He is co-founder of QAMLab SAS, and member of the Quantitative Management Initiative (QMI) scientific committee. His fields of expertise encompass statistical signal processing, digital communications, embedded systems and QUANT finance.
Emmanuelle Jay is co-founder and President of QAMLab SAS. She has worked at Aequam Capital as co-head of R&D since April 2011 and is member of the Quantitative Management Initiative (QMI) scientific committee. Her research interests include SP for finance, quantitative and statistical finance, and hedge fund analysis.

Contents

Foreword xi
Rama CONT

Introduction xv

Notations and Acronyms xxi

Chapter 1. Factor Models and General Definition 1

1.1. Introduction 1

1.2. What are factor models? 2

1.3. Why factor models in finance? 7

1.4. How to build factor models? 11

1.5. Historical perspective 14

1.6. Glossary 18

Chapter 2. Factor Selection 23

2.1. Introduction 23

2.2. Qualitative know-how 24

2.3. Quantitative methods based on eigenfactors 31

2.4. Model order choice 36

2.5. Appendix 1: Covariance matrix estimation 38

2.6. Appendix 2: Similarity of the eigenfactor selection with the MUSIC algorithm 46

2.7. Appendix 3: Large panel data 48

2.8. Chapter 2 highlights 56

Chapter 3. Least Squares Estimation (LSE) and Kalman Filtering (KF) for Factor Modeling: A Geometrical Perspective 59

3.1. Introduction 59

3.2. Why LSE and KF in factor modeling? 60

3.3. LSE setup 62

3.4. LSE objective and criterion 63

3.5. How LSE is working (for LSE users and programmers) 64

3.6. Interpretation of the LSE solution . 65

3.7. Derivations of LSE solution 70

3.8. Why KF and which setup? 71

3.9. What are the main properties of the KF model? 74

3.10. What is the objective of KF? 76

3.11. How does the KF work (for users and programmers)? 77

3.12. Interpretation of the KF updates 81

3.13. Practice 86

3.14. Geometrical derivation of KF updating equations 104

3.15. Highlights 112

3.16. Appendix: Matrix inversion lemma 116

Chapter 4. A Regularized Kalman Filter (rgKF) for Spiky Data 117

4.1. Introduction 117

4.2. Preamble: statistical evidence on the KF recursive equations 119

4.3. Robust KF 119

4.4. rgKF: the rgKF(NG,lq ) 121

4.5. Application to detect irregularities in hedge fund returns 128

4.6. Conclusion 130

4.7. Chapter highlights 130

Appendix: Some Probability Densities 133

Conclusion 141

Bibliography 143

Index 153

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