Description

Book Synopsis

Life on earth is filled with many mysteries, but perhaps the most challenging of these is the nature of Intelligence.

Prof. Terrence J. Sejnowski, Computational Neurobiologist

The main objective of this book is to create awareness about both the promises and the formidable challenges that the era of Data-Driven Decision-Making and Machine Learning are confronted with, and especially about how these new developments may influence the future of the financial industry.

The subject of Financial Machine Learning has attracted a lot of interest recently, specifically because it represents one of the most challenging problem spaces for the applicability of Machine Learning. The author has used a novel approach to introduce the reader to this topic:

  • The first half of the book is a readable and coherent introduction to two modern topics that are not generally considered together: the data-driven paradigm and Computational Inte

    Table of Contents

    About the Author xvii

    Acknowledgments xix

    About the Website xxi

    Introduction xxiii

    Motivation xxiv

    Target Audience xxvi

    Book Structure xxvii

    1 The Evolution of Trading Paradigms 1

    1.1 Infrastructure-Related Paradigms in Trading 1

    1.1.1 Open Outcry Trading 2

    1.1.2 Advances in Communication Technology 2

    1.1.3 The Digital Revolution in the Financial Markets 3

    1.1.4 The High-Frequency Trading Paradigm 5

    1.1.5 Blockchain and the Decentralization of Markets 6

    1.2 Decision-Making Paradigms in Trading 7

    1.2.1 Discretionary Trading 8

    1.2.2 Systematic Trading 8

    1.2.3 Algorithmic Trading 9

    1.3 The New Paradigm of Data-Driven Trading 11

    References 14

    2 The Role of Data in Trading and Investing 15

    2.1 The Data-Driven Decision-Making Paradigm 15

    2.2 The Data Economy is Fueling the Future 17

    2.2.1 The Value of Data – Data as an Asset 18

    2.3 Defining Data and Its Utility 20

    2.4 The Journey from Data to Intelligence 24

    2.5 The Utility of Data in Trading and Investing 30

    2.6 The Alternative Data and Its Use in Trading and Investing 34

    References 36

    3 Artificial Intelligence – Between Myth and Reality 39

    3.1 Introduction 39

    3.2 The Evolution of AI 41

    3.2.1 Early History 41

    3.2.2 The Modern AI Era 43

    3.2.3 Important Milestones in the Development of AI 44

    3.2.4 Projections for the Immediate Future 48

    3.2.5 Meta-Learning – An Exciting New Development 49

    3.3 The Meaning of AI – A Critical View 51

    3.4 On the Applicability of AI to Finance 54

    3.4.1 Data Stationarity 57

    3.4.2 Data Quality 58

    3.4.3 Data Dimensionality 59

    3.5 Perspectives and Future Directions 60

    References 62

    4 Computational Intelligence – A Principled Approach for the Era of Data Exploration 63

    4.1 Introduction to Computational Intelligence 63

    4.1.1 Defining Intelligence 63

    4.1.2 What is Computational Intelligence? 64

    4.1.3 Mapping the Field of Study 66

    4.1.4 Problems vs. Tools 68

    4.1.5 Current Challenges 69

    4.1.6 The Future of Computational Intelligence 70

    4.1.7 Examples in Finance 71

    4.2 The PAC Theory 72

    4.2.1 The Probably Approximately Correct Framework 73

    4.2.2 Why AI is a Very Lofty Goal to Achieve 75

    4.2.3 Examples of Ecorithms in Finance 78

    4.3 Technology Drivers Behind the ML Surge 81

    4.3.1 Data 82

    4.3.2 Algorithms 82

    4.3.3 Hardware Accelerators 82

    References 84

    5 How to Apply the Principles of Computational Intelligence in Quantitative Finance 87

    5.1 The Viability of Computational Intelligence 87

    5.2 On the Applicability of CI to Quantitative Finance 91

    5.3 A Brief Introduction to Reinforcement Learning 94

    5.3.1 Defining the Agent 96

    5.3.2 Model-Based Markov Decision Process 98

    5.3.3 Model-Free Reinforcement Learning 101

    5.4 Conclusions 104

    References 104

    6 Case Study 1: Optimizing Trade Execution 107

    6.1 Introduction to the Problem 107

    6.1.1 On Limit Orders and Market Microstructure 109

    6.1.2 Formulation of Base-Line Strategies 111

    6.1.3 A Reinforcement Learning Formulation for the Optimized Execution Problem 112

    6.2 Current State-of-the-Art in Optimized Trade Execution 114

    6.3 Implementation Methodology 116

    6.3.1 Simulating the Interaction with the Market Microstructure 116

    6.3.2 Using Dynamic Programming to Optimize Trade Execution 118

    6.3.3 Using Reinforcement Learning to Optimize Trade Execution 119

    6.4 Empirical Results 122

    6.4.1 Application to Equities 122

    6.4.2 Using Private Variables Only 123

    6.4.3 Using Both Private and Market Variables 123

    6.4.4 Application to Futures 124

    6.4.5 Another Example 126

    6.5 Conclusions and Future Directions 127

    6.5.1 Further Research 127

    References 128

    7 Case Study 2: The Dynamics of the Limit Order Book 129

    7.1 Introduction to the Problem 129

    7.1.1 The New Era of Prediction 130

    7.1.2 New Challenges 131

    7.1.3 High-Frequency Data 132

    7.2 Current State-of-the-Art in the Prediction of Directional Price Movement in the LOB 133

    7.2.1 The Contrarians 136

    7.3 Using Support Vector Machines and Random Forest Classifiers for Directional Price Forecast 138

    7.3.1 Empirical Results 139

    7.4 Studying the Dynamics of the LOB with Reinforcement Learning 141

    7.4.1 Empirical Results 142

    7.4.2 Conclusions 144

    7.5 Studying the Dynamics of the LOB with Deep Neural Networks 145

    7.5.1 Results 148

    7.6 Studying the Dynamics of the Limit Order Book with Long Short-Term Memory Networks 149

    7.6.1 Empirical Results 152

    7.6.2 Conclusions 153

    7.7 Studying the Dynamics of the LOB with Convolutional Neural Networks 153

    7.7.1 Empirical Results 155

    7.7.2 Conclusions 156

    References 157

    8 Case Study 3: Applying Machine Learning to Portfolio Management 159

    8.1 Introduction to the Problem 159

    8.1.1 The Problem of Portfolio Diversification 160

    8.2 Current State-of-the-Art in Portfolio Modeling 161

    8.2.1 The Classic Approach 161

    8.2.2 The ML Approach 162

    8.3 A Deep Portfolio Approach to Portfolio Optimization 163

    8.3.1 Autoencoders 164

    8.3.2 Methodology – The Four-Step Algorithm 166

    8.3.3 Results 167

    8.4 A Q-Learning Approach to the Problem of Portfolio Optimization 167

    8.4.1 Problem Statement 168

    8.4.2 Methodology 169

    8.4.3 The Deep Q-Learning Algorithm 169

    8.4.4 Results 170

    8.5 A Deep Reinforcement Learning Approach to Portfolio Management 170

    8.5.1 Methodology 170

    8.5.2 Data 171

    8.5.3 The RL Setting: Agent, Environment, and

    Policy 172

    8.5.4 The CNN Implementation 172

    8.5.5 The RNN and LSTM Implementations 172

    8.5.6 Results 173

    References 174

    9 Case Study 4: Applying Machine Learning to Market Making 175

    9.1 Introduction to the Problem 175

    9.2 Current State-of-the-Art in Market Making 177

    9.3 Applications of Temporal-Difference RL in Market Making 180

    9.3.1 Methodology 180

    9.3.2 The Simulator 181

    9.3.3 Market Making Agent Specification 182

    9.3.4 Empirical Results 185

    9.4 Market Making in High-Frequency Trading Using RL 189

    9.4.1 Methodology 190

    9.4.2 Experimental Setting 191

    9.4.3 Results and Conclusions 192

    9.5 Other Research Studies 192

    References 193

    10 Case Study 5: Applications of Machine Learning to Derivatives Valuation 197

    10.1 Introduction to the Problem 197

    10.1.1 Problem Statement and Research Questions 199

    10.2 Current State-of-the-Art in Derivatives Valuation by Applying ML 200

    10.2.1 The Beginnings: 1992–2004 201

    10.2.2 The Last Decade 202

    10.3 Using Deep Learning for Valuation of Derivatives 204

    10.3.1 Implementation Methodology 205

    10.3.2 Empirical Results 207

    10.3.3 Conclusions and Future Directions 208

    10.3.4 Other Research Studies 208

    10.4 Using RL for Valuation of Derivatives 210

    10.4.1 Using a Simple Markov Decision Process 210

    10.4.2 The Q-Learning Black-Scholes Model (QLBS) 212

    References 214

    11 Case Study 6: Using Machine Learning for Risk Management and Compliance 217

    11.1 Introduction to the Problem 217

    11.1.1 Challenges 218

    11.1.2 The Problem 219

    11.2 Current State-of-the-Art for Applications of ML to Risk Management and Compliance 219

    11.2.1 Credit Risk 219

    11.2.2 Market Risk 220

    11.2.3 Operational Risk 221

    11.2.4 Regulatory Compliance Risk and RegTech 222

    11.2.5 Current Challenges and Future Directions 223

    11.3 Machine Learning in Credit Risk Modeling 224

    11.3.1 Data 225

    11.3.2 Models 225

    11.3.3 Results 226

    11.4 Using Deep Learning for Credit Scoring 227

    11.4.1 Introduction 227

    11.4.2 Deep Belief Networks and Restricted Boltzmann Machines 228

    11.4.3 Empirical Results 230

    11.5 Using ML in Operational Risk and Market Surveillance 230

    11.5.1 Introduction 230

    11.5.2 An ML Approach to Market Surveillance 232

    11.5.3 Conclusions 233

    References 233

    12 Conclusions and Future Directions 237

    12.1 Concluding Remarks 237

    12.2 The Paradigm Shift 239

    12.2.1 Mathematical Models vs. Data Inference 240

    12.3 De-Noising the AI Hype 243

    12.3.1 Why Intellectual Honesty Should Not Be Abandoned 244

    12.4 An Emerging Engineering Discipline 245

    12.4.1 The Problem 246

    12.4.2 The Market 246

    12.4.3 A Possible Solution 246

    12.5 Future Directions 247

    References 248

    Index 249

Applications of Computational Intelligence in

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    A Hardback by Cris Doloc

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      Publisher: John Wiley & Sons Inc
      Publication Date: 05/12/2019
      ISBN13: 9781119550501, 978-1119550501
      ISBN10: 1119550505

      Description

      Book Synopsis

      Life on earth is filled with many mysteries, but perhaps the most challenging of these is the nature of Intelligence.

      Prof. Terrence J. Sejnowski, Computational Neurobiologist

      The main objective of this book is to create awareness about both the promises and the formidable challenges that the era of Data-Driven Decision-Making and Machine Learning are confronted with, and especially about how these new developments may influence the future of the financial industry.

      The subject of Financial Machine Learning has attracted a lot of interest recently, specifically because it represents one of the most challenging problem spaces for the applicability of Machine Learning. The author has used a novel approach to introduce the reader to this topic:

      • The first half of the book is a readable and coherent introduction to two modern topics that are not generally considered together: the data-driven paradigm and Computational Inte

        Table of Contents

        About the Author xvii

        Acknowledgments xix

        About the Website xxi

        Introduction xxiii

        Motivation xxiv

        Target Audience xxvi

        Book Structure xxvii

        1 The Evolution of Trading Paradigms 1

        1.1 Infrastructure-Related Paradigms in Trading 1

        1.1.1 Open Outcry Trading 2

        1.1.2 Advances in Communication Technology 2

        1.1.3 The Digital Revolution in the Financial Markets 3

        1.1.4 The High-Frequency Trading Paradigm 5

        1.1.5 Blockchain and the Decentralization of Markets 6

        1.2 Decision-Making Paradigms in Trading 7

        1.2.1 Discretionary Trading 8

        1.2.2 Systematic Trading 8

        1.2.3 Algorithmic Trading 9

        1.3 The New Paradigm of Data-Driven Trading 11

        References 14

        2 The Role of Data in Trading and Investing 15

        2.1 The Data-Driven Decision-Making Paradigm 15

        2.2 The Data Economy is Fueling the Future 17

        2.2.1 The Value of Data – Data as an Asset 18

        2.3 Defining Data and Its Utility 20

        2.4 The Journey from Data to Intelligence 24

        2.5 The Utility of Data in Trading and Investing 30

        2.6 The Alternative Data and Its Use in Trading and Investing 34

        References 36

        3 Artificial Intelligence – Between Myth and Reality 39

        3.1 Introduction 39

        3.2 The Evolution of AI 41

        3.2.1 Early History 41

        3.2.2 The Modern AI Era 43

        3.2.3 Important Milestones in the Development of AI 44

        3.2.4 Projections for the Immediate Future 48

        3.2.5 Meta-Learning – An Exciting New Development 49

        3.3 The Meaning of AI – A Critical View 51

        3.4 On the Applicability of AI to Finance 54

        3.4.1 Data Stationarity 57

        3.4.2 Data Quality 58

        3.4.3 Data Dimensionality 59

        3.5 Perspectives and Future Directions 60

        References 62

        4 Computational Intelligence – A Principled Approach for the Era of Data Exploration 63

        4.1 Introduction to Computational Intelligence 63

        4.1.1 Defining Intelligence 63

        4.1.2 What is Computational Intelligence? 64

        4.1.3 Mapping the Field of Study 66

        4.1.4 Problems vs. Tools 68

        4.1.5 Current Challenges 69

        4.1.6 The Future of Computational Intelligence 70

        4.1.7 Examples in Finance 71

        4.2 The PAC Theory 72

        4.2.1 The Probably Approximately Correct Framework 73

        4.2.2 Why AI is a Very Lofty Goal to Achieve 75

        4.2.3 Examples of Ecorithms in Finance 78

        4.3 Technology Drivers Behind the ML Surge 81

        4.3.1 Data 82

        4.3.2 Algorithms 82

        4.3.3 Hardware Accelerators 82

        References 84

        5 How to Apply the Principles of Computational Intelligence in Quantitative Finance 87

        5.1 The Viability of Computational Intelligence 87

        5.2 On the Applicability of CI to Quantitative Finance 91

        5.3 A Brief Introduction to Reinforcement Learning 94

        5.3.1 Defining the Agent 96

        5.3.2 Model-Based Markov Decision Process 98

        5.3.3 Model-Free Reinforcement Learning 101

        5.4 Conclusions 104

        References 104

        6 Case Study 1: Optimizing Trade Execution 107

        6.1 Introduction to the Problem 107

        6.1.1 On Limit Orders and Market Microstructure 109

        6.1.2 Formulation of Base-Line Strategies 111

        6.1.3 A Reinforcement Learning Formulation for the Optimized Execution Problem 112

        6.2 Current State-of-the-Art in Optimized Trade Execution 114

        6.3 Implementation Methodology 116

        6.3.1 Simulating the Interaction with the Market Microstructure 116

        6.3.2 Using Dynamic Programming to Optimize Trade Execution 118

        6.3.3 Using Reinforcement Learning to Optimize Trade Execution 119

        6.4 Empirical Results 122

        6.4.1 Application to Equities 122

        6.4.2 Using Private Variables Only 123

        6.4.3 Using Both Private and Market Variables 123

        6.4.4 Application to Futures 124

        6.4.5 Another Example 126

        6.5 Conclusions and Future Directions 127

        6.5.1 Further Research 127

        References 128

        7 Case Study 2: The Dynamics of the Limit Order Book 129

        7.1 Introduction to the Problem 129

        7.1.1 The New Era of Prediction 130

        7.1.2 New Challenges 131

        7.1.3 High-Frequency Data 132

        7.2 Current State-of-the-Art in the Prediction of Directional Price Movement in the LOB 133

        7.2.1 The Contrarians 136

        7.3 Using Support Vector Machines and Random Forest Classifiers for Directional Price Forecast 138

        7.3.1 Empirical Results 139

        7.4 Studying the Dynamics of the LOB with Reinforcement Learning 141

        7.4.1 Empirical Results 142

        7.4.2 Conclusions 144

        7.5 Studying the Dynamics of the LOB with Deep Neural Networks 145

        7.5.1 Results 148

        7.6 Studying the Dynamics of the Limit Order Book with Long Short-Term Memory Networks 149

        7.6.1 Empirical Results 152

        7.6.2 Conclusions 153

        7.7 Studying the Dynamics of the LOB with Convolutional Neural Networks 153

        7.7.1 Empirical Results 155

        7.7.2 Conclusions 156

        References 157

        8 Case Study 3: Applying Machine Learning to Portfolio Management 159

        8.1 Introduction to the Problem 159

        8.1.1 The Problem of Portfolio Diversification 160

        8.2 Current State-of-the-Art in Portfolio Modeling 161

        8.2.1 The Classic Approach 161

        8.2.2 The ML Approach 162

        8.3 A Deep Portfolio Approach to Portfolio Optimization 163

        8.3.1 Autoencoders 164

        8.3.2 Methodology – The Four-Step Algorithm 166

        8.3.3 Results 167

        8.4 A Q-Learning Approach to the Problem of Portfolio Optimization 167

        8.4.1 Problem Statement 168

        8.4.2 Methodology 169

        8.4.3 The Deep Q-Learning Algorithm 169

        8.4.4 Results 170

        8.5 A Deep Reinforcement Learning Approach to Portfolio Management 170

        8.5.1 Methodology 170

        8.5.2 Data 171

        8.5.3 The RL Setting: Agent, Environment, and

        Policy 172

        8.5.4 The CNN Implementation 172

        8.5.5 The RNN and LSTM Implementations 172

        8.5.6 Results 173

        References 174

        9 Case Study 4: Applying Machine Learning to Market Making 175

        9.1 Introduction to the Problem 175

        9.2 Current State-of-the-Art in Market Making 177

        9.3 Applications of Temporal-Difference RL in Market Making 180

        9.3.1 Methodology 180

        9.3.2 The Simulator 181

        9.3.3 Market Making Agent Specification 182

        9.3.4 Empirical Results 185

        9.4 Market Making in High-Frequency Trading Using RL 189

        9.4.1 Methodology 190

        9.4.2 Experimental Setting 191

        9.4.3 Results and Conclusions 192

        9.5 Other Research Studies 192

        References 193

        10 Case Study 5: Applications of Machine Learning to Derivatives Valuation 197

        10.1 Introduction to the Problem 197

        10.1.1 Problem Statement and Research Questions 199

        10.2 Current State-of-the-Art in Derivatives Valuation by Applying ML 200

        10.2.1 The Beginnings: 1992–2004 201

        10.2.2 The Last Decade 202

        10.3 Using Deep Learning for Valuation of Derivatives 204

        10.3.1 Implementation Methodology 205

        10.3.2 Empirical Results 207

        10.3.3 Conclusions and Future Directions 208

        10.3.4 Other Research Studies 208

        10.4 Using RL for Valuation of Derivatives 210

        10.4.1 Using a Simple Markov Decision Process 210

        10.4.2 The Q-Learning Black-Scholes Model (QLBS) 212

        References 214

        11 Case Study 6: Using Machine Learning for Risk Management and Compliance 217

        11.1 Introduction to the Problem 217

        11.1.1 Challenges 218

        11.1.2 The Problem 219

        11.2 Current State-of-the-Art for Applications of ML to Risk Management and Compliance 219

        11.2.1 Credit Risk 219

        11.2.2 Market Risk 220

        11.2.3 Operational Risk 221

        11.2.4 Regulatory Compliance Risk and RegTech 222

        11.2.5 Current Challenges and Future Directions 223

        11.3 Machine Learning in Credit Risk Modeling 224

        11.3.1 Data 225

        11.3.2 Models 225

        11.3.3 Results 226

        11.4 Using Deep Learning for Credit Scoring 227

        11.4.1 Introduction 227

        11.4.2 Deep Belief Networks and Restricted Boltzmann Machines 228

        11.4.3 Empirical Results 230

        11.5 Using ML in Operational Risk and Market Surveillance 230

        11.5.1 Introduction 230

        11.5.2 An ML Approach to Market Surveillance 232

        11.5.3 Conclusions 233

        References 233

        12 Conclusions and Future Directions 237

        12.1 Concluding Remarks 237

        12.2 The Paradigm Shift 239

        12.2.1 Mathematical Models vs. Data Inference 240

        12.3 De-Noising the AI Hype 243

        12.3.1 Why Intellectual Honesty Should Not Be Abandoned 244

        12.4 An Emerging Engineering Discipline 245

        12.4.1 The Problem 246

        12.4.2 The Market 246

        12.4.3 A Possible Solution 246

        12.5 Future Directions 247

        References 248

        Index 249

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