Description
Quantitative Portfolio Management: The Art and Science of Statistical Arbitrage, ISBN-13: 978-1119821328
[PDF eBook eTextbook]
- Publisher: Wiley; 1st edition (August 31, 2021)
- Language: English
- 304 pages
- ISBN-10: 1119821320
- ISBN-13: 978-1119821328
Discover foundational and advanced techniques in quantitative equity trading from a veteran insider.
In Quantitative Portfolio Management: The Art and Science of Statistical Arbitrage, distinguished physicist-turned-quant Dr. Michael Isichenko delivers a systematic review of the quantitative trading of equities, or statistical arbitrage. The book teaches you how to source financial data, learn patterns of asset returns from historical data, generate and combine multiple forecasts, manage risk, build a stock portfolio optimized for risk and trading costs, and execute trades.
In this important book, you’ll discover:
- Machine learning methods of forecasting stock returns in efficient financial markets
- How to combine multiple forecasts into a single model by using secondary machine learning, dimensionality reduction, and other methods
- Ways of avoiding the pitfalls of overfitting and the curse of dimensionality, including topics of active research such as “benign overfitting” in machine learning
- The theoretical and practical aspects of portfolio construction, including multi-factor risk models, multi-period trading costs, and optimal leverage
Table of Contents:
Preface 1
Introduction 3
1 Market Data 9
1.1 Tick and bar data 9
1.2 Corporate actions and adjustment factor 10
1.3 Linear vs log returns 11
2 Forecasting 13
2.1 Data for forecasts 14
2.1.1 Point-in-time and lookahead 15
2.1.2 Security master and survival bias 16
2.1.3 Fundamental and accounting data 16
2.1.4 Analyst estimates 17
2.1.5 Supply chain and competition 18
2.1.6 M&A and risk arbitrage 18
2.1.7 Event-based predictors 18
2.1.8 Holdings and flows 19
2.1.9 News and social media 20
2.1.10 Macroeconomic data 21
2.1.11 Alternative data 21
2.1.12 Alpha capture 21
2.2 Technical forecasts 22
2.2.1 Mean reversion 22
2.2.2 Momentum 24
2.2.3 Trading volume 24
2.2.4 Statistical predictors 25
2.2.5 Data from other asset classes 25
2.3 Basic concepts of statistical learning 27
2.3.1 Mutual information and Shannon entropy 28
2.3.2 Likelihood and Bayesian inference 32
2.3.3 Mean square error and correlation 33
2.3.4 Bias-variance tradeoff 35
2.3.5 PAC learnability, VC dimension, and generalization error bounds 36
2.4 Machine learning 40
2.4.1 Types of machine learning 41
2.4.2 Overfitting 43
2.4.3 Ordinary and generalized least squares 44
2.4.4 Deep learning 46
2.4.5 Types of neural networks 48
2.4.6 Nonparametric methods 51
2.4.7 Cross-validation 54
2.4.8 Curse of dimensionality, eigenvalue cleaning, and shrinkage 56
2.4.9 Smoothing and regularization 61
2.4.9.1 Smoothing spline 62
2.4.9.2 Total variation denoising 62
2.4.9.3 Nadaraya-Watson kernel smoother 63
2.4.9.4 Local linear regression 64
2.4.9.5 Gaussian process 64
2.4.9.6 Ridge and kernel ridge regression 67
2.4.9.7 Bandwidth and hypertuning of kernel smoothers 68
2.4.9.8 Lasso regression 69
2.4.10 Generalization puzzle of deep and overparameterized learning 69
2.4.11 Online machine learning 74
2.4.12 Boosting 75
2.4.13 Randomized learning 79
2.4.14 Latent structure 80
2.4.15 No free lunch and AutoML 81
2.4.16 Computer power and machine learning 83
2.5 Dynamical modeling 87
2.6 Alternative reality 89
2.7 Timeliness-significance tradeoff 90
2.8 Grouping 91
2.9 Conditioning 92
2.10 Pairwise predictors 92
2.11 Forecast for securities from their linear combinations 93
2.12 Forecast research vs simulation 95
3 Forecast Combining 97
3.1 Correlation and diversification 98
3.2 Portfolio combining 99
3.3 Mean-variance combination of forecasts 102
3.4 Combining features vs combining forecasts 103
3.5 Dimensionality reduction 104
3.5.1 PCA, PCR, CCA, ICA, LCA, and PLS 105
3.5.2 Clustering 107
3.5.3 Hierarchical combining 108
3.6 Synthetic security view 108
3.7 Collaborative filtering 109
3.8 Alpha pool management 110
3.8.1 Forecast development guidelines 111
3.8.1.1 Point-in-time data 111
3.8.1.2 Horizon and scaling 111
3.8.1.3 Type of target return 112
3.8.1.4 Performance metrics 112
3.8.1.5 Measure of forecast uncertainty 112
3.8.1.6 Correlation with existing forecasts 112
3.8.1.7 Raw feature library 113
3.8.1.8 Overfit handling 113
3.8.2 Pnl attribution 114
3.8.2.1 Marginal attribution 114
3.8.2.2 Regression-based attribution 114
4 Risk 117
4.1 Value at risk and expected shortfall 117
4.2 Factor models 119
4.3 Types of risk factors 120
4.4 Return and risk decomposition 121
4.5 Weighted PCA 122
4.6 PCA transformation 123
4.7 Crowding and liquidation 124
4.8 Liquidity risk and short squeeze 126
4.9 Forecast uncertainty and alpha risk 127
5 Trading Costs 129
5.1 Slippage 130
5.2 Impact 130
5.2.1 Empirical observations 132
5.2.2 Linear impact model 133
5.2.3 Impact arbitrage 135
5.3 Cost of carry 135
6 Portfolio Construction 137
6.1 Hedged allocation 137
6.2 Single-period vs multi-period mean-variance utility 139
6.3 Single-name multi-period optimization 140
6.3.1 Optimization with fast impact decay 141
6.3.2 Optimization with exponentially decaying impact 142
6.3.3 Optimization conditional on a future position 143
6.3.4 Position value and utility leak 145
6.3.5 Optimization with slippage 146
6.4 Multi-period portfolio optimization 148
6.4.1 Unconstrained portfolio optimization with linear impact costs 149
6.4.2 Iterative handling of factor risk 150
6.4.3 Optimizing future EMA positions 151
6.4.4 Portfolio optimization using utility leak rate 151
6.4.5 Notes on portfolio optimization with slippage 152
6.5 Portfolio capacity 152
6.6 Portfolio optimization with forecast revision 153
6.7 Portfolio optimization with forecast uncertainty 156
6.8 Kelly criterion and optimal leverage 157
6.9 Intraday optimization and execution 160
6.9.1 Trade curve 160
6.9.2 Forecast-timed execution 161
6.9.3 Algorithmic trading and HFT 162
6.9.4 HFT controversy 166
7 Simulation 169
7.1 Simulation vs production 170
7.2 Simulation and overfitting 171
7.3 Research and simulation efficiency 172
7.4 Paper trading 173
7.5 Bugs 173
Afterword: Economic and Social Aspects of Quant Trading 179
Appendix 183
A1 Secmaster mappings 183
A2 Woodbury matrix identities 184
A3 Toeplitz matrix 185
Index 187
Questions index 195
Quotes index 197
Stories index 199
Michael Isichenko, PhD, is a theoretical physicist and a quantitative portfolio manager who worked at Kurchatov Institute, University of Texas, University of California, SAC Capital Advisors, Société Générale, and Jefferies. He received his doctorate in physics and mathematics from the Moscow Institute of Physics and Technology and is an expert in plasma physics, nonlinear dynamics, and statistical and chaos theory.
What makes us different?
• Instant Download
• Always Competitive Pricing
• 100% Privacy
• FREE Sample Available
• 24-7 LIVE Customer Support
The Handbook of Law and Society, ISBN-13: 978-1118701461
A Photographic Atlas for the Anatomy and Physiology Laboratory 7th Edition, ISBN-13: 978-0895828750
A Compendium of Neuropsychological Tests 3rd Edition, ISBN-13: 978-0195159578
Myers’ Psychology (12th Edition) – eBook
The Laws Protecting Animals and Ecosystems, ISBN-13: 978-1118876459
The Execution Factor: The One Skill that Drives Success, ISBN-13: 978-1260128529
Understanding Business (12th edition) – PDF – eTextBook
101 Trauma-Informed Interventions Linda Curran, ISBN-13: 978-1936128426
James Stewart’s Calculus: Early Transcendentals (8th edition) – eTextBook
Theory of Constraints Handbook James F Cox III, ISBN-13: 978-0071665544
3D Virtual Treatment Planning of Orthognathic Surgery Gwen Swennen, ISBN-13: 978-3662473887
Encyclopedia of Information Science and Technology, 4th Edition (10 Volumes)
You’re Wrong, I’m Right: Dueling Authors Reexamine Classic Teachings in Anesthesia, ISBN-13: 978-3319431673
The Wall Street MBA 3rd Edition Reuben Advani, ISBN-13: 978-1260135596
Elementary Statistics Using Excel (6th Edition) – eBook
Navigated Transcranial Magnetic Stimulation in Neurosurgery Sandro M. Krieg, ISBN-13: 978-3319549170
Abnormal Psychology 16th Edition James N. Butcher, ISBN-13: 978-0205944286
Essentials of Cultural Anthropology: A Toolkit for a Global Age (2nd Edition) – eBook
Nano/Microscale Heat Transfer 2nd Edition by Zhuomin M. Zhang, ISBN-13: 978-3030450380
Comprehensive Clinical Nephrology (6th Edition) – eBook
Psychology in Action (12th Edition) – eBook
Fundamentals of Information Systems Security (3rd Edition) – eBook
Abnormal Psychology: An Integrative Approach 8th Edition David H. Barlow, ISBN-13: 978-1305950443
The Limits of Hobbesian Contractarianism, ISBN-13: 978-0521420624
The Joy of Abstraction: An Exploration of Math, Category Theory, and Life by Eugenia Cheng, ISBN-13: 978-1108477222
Project Management: The Managerial Process (7th Edition) – eBook
The Economics of Money, Banking and Financial Markets 11th Edition, ISBN 13: 978-1292094182
Pharmacotherapeutics for Advanced Practice Nurse Prescribers (4th Edition)
A Visual Analogy Guide to Human Anatomy & Physiology Paul A. Krieger, 1st Edition, ISBN-13: 978-0895828019
Thinking in Systems: A Primer Donella H. Meadows, ISBN-13: 978-1603580557
Guyton and Hall Textbook of Medical Physiology (13th Edition) – eBook
Working Through Conflict 9th Edition Joseph P. Folger, ISBN-13: 978-0367461478
Leadership: Theory and Practice (7th Edition) – eBook
Transportation: A Global Supply Chain Perspective 9th Edition, ISBN-13: 978-1337406642
Abnormal Psychology: Perspectives 6th Edition David Dozois, ISBN-13: 978-0134428871
Managerial Accounting (16th Edition) – eBook
Nutrition: An Applied Approach (5th Edition) – eBook
Understanding Management 10th Edition Richard L. Daft, ISBN-13: 978-1305502215
A History of Modern Psychology 5th Edition, ISBN-13: 978-1118833759
Physics 11th Edition by John D. Cutnell, Full Textbook ISBN-13: 978-1119391869
The Practice of Research in Criminology and Criminal Justice 7th Edition, ISBN-13: 978-1544339122
Abnormal Psychology 9th Edition Thomas Oltmanns, ISBN-13: 978-0134899053 
Reviews
There are no reviews yet.