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Part I Portfolio and Risk Management Overview |
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1 An Introduction to Quantitative Portfolio Management and Risk Management |
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3 | (12) |
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3 | (3) |
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1.2 Types of Portfolio Management |
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6 | (1) |
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1.3 The Classic Asset and Derivatives |
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7 | (3) |
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1.4 Traditional and Modern Approaches |
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10 | (1) |
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1.5 Tools for Measuring Portfolio Returns |
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11 | (1) |
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1.6 Variance on Return in a Portfolio |
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12 | (1) |
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13 | (2) |
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14 | (1) |
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2 The Major Trends in Global Financial Asset Management |
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15 | (18) |
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15 | (1) |
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2.2 Global Asset Management Today |
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16 | (5) |
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2.3 Development Trends in the Asset Management Industry |
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21 | (12) |
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28 | (5) |
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Part II Machine Learning and Alternative Data Overview |
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3 Machine Learning and AI in Financial Portfolio Management |
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33 | (42) |
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33 | (9) |
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3.2 Analysis of Machine Learning Application |
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42 | (17) |
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3.3 Comparison of Machine Learning Algorithms |
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59 | (4) |
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3.4 Select the Best Model |
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63 | (2) |
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3.5 Application of Machine Learning in Financial Field |
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65 | (3) |
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3.6 Problem Analysis of Machine Learning |
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68 | (5) |
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73 | (2) |
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4 Introduction of Alternative Data in Finance |
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75 | (14) |
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4.1 Alternative Data Overview |
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75 | (3) |
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4.2 Sources of Alternative Data |
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78 | (3) |
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4.3 Criteria for Evaluating Alternative Datasets |
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81 | (2) |
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4.4 Working with Alternative Data |
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83 | (6) |
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88 | (1) |
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5 Alternative Data Utilization from a Country Perspective |
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89 | (22) |
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89 | (6) |
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95 | (5) |
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100 | (4) |
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104 | (7) |
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106 | (5) |
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Part III Factors Applications in Financial Management |
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6 Smart Beta and Risk Factors Based on Textural Data and Machine Learning |
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111 | (18) |
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111 | (1) |
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6.2 Textural Analysis Technologies |
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112 | (1) |
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6.3 Natural Language Processing |
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112 | (1) |
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6.4 Machine Learning/Deep Learning (ML/DL) |
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113 | (3) |
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6.5 Factors for Finance Built on Textural Dataset Analysis |
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116 | (8) |
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124 | (5) |
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125 | (4) |
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7 Smart Beta and Risk Factors Based on IoTs |
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129 | (12) |
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129 | (2) |
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7.2 A Risk Assessment Model Based on IoT and AIoT |
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131 | (3) |
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7.3 Applications of IoT and AIoT in Finance |
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134 | (7) |
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138 | (3) |
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8 Environmental, Social Responsibility, and Corporate Governance (ESG) Factors of Corporations |
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141 | (26) |
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8.1 Introduction of Environmental, Social, and Governance (ESG) |
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141 | (4) |
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8.2 ESG in the Eyes of Investors |
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145 | (6) |
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8.3 The Influence of ESG on Firm Risk |
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151 | (3) |
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8.4 The Influence of ESG on Firm Performance and Firm Value |
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154 | (9) |
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8.5 Is ESG a Risk Factor? |
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163 | (1) |
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8.6 The Digital Economy and ESG |
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164 | (3) |
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165 | (2) |
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9 Sentiment Factors in Finance |
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167 | (18) |
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9.1 What Is Sentiment Factor? |
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167 | (2) |
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9.2 Investor Sentiment and Behavioral Finance |
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169 | (5) |
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9.3 Sentiment's Market Influence |
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174 | (3) |
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9.4 Sentiment Factor Constructions and Sentiment Analysis |
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177 | (8) |
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180 | (5) |
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Part IV Case Studies of Machine Learnings and Alternative Data |
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10 Fraud and Deception Detection: Text-Based Data Analytics |
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185 | (14) |
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186 | (3) |
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189 | (10) |
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197 | (2) |
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11 Machine Learning Technique in Trading: A Case Study in the EURUSD Market |
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199 | (18) |
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11.1 Introduction to Foreign Exchange Markets |
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199 | (2) |
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11.2 Characteristics of Foreign Exchange Markets |
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201 | (1) |
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11.3 Euro Dollar Exchange Rate (EURUSD) |
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202 | (1) |
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11.4 Fundamental Factors Affecting the Foreign Exchange Rate |
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202 | (2) |
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11.5 Data and Trading Strategy Overview |
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204 | (1) |
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11.6 Supervised Machine Learning Techniques |
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205 | (5) |
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210 | (3) |
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213 | (4) |
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215 | (2) |
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12 Analyzing the Special Purpose Acquisition Corporation (SPAC) with ESG Factors |
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217 | (34) |
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12.1 Brief Introduction to SPACs |
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217 | (6) |
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223 | (8) |
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12.3 Analysis of the Impact of Founder Factors on the Revenue of SPACs |
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231 | (17) |
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248 | (3) |
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249 | (2) |
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13 ESG Impacts on Corporation's Fundamental: Studies from the Healthcare Industry |
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251 | (28) |
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251 | (1) |
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13.2 Data and Methodology |
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252 | (3) |
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13.3 Empirical Model and Results |
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255 | (10) |
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13.4 Investment Strategy on ESG Factors |
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265 | (4) |
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269 | (10) |
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Appendix 1 List of Companies Used in the Research |
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269 | (1) |
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Appendix 2 Quantile ESG Score for Every Quarter |
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270 | (1) |
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Appendix 3 Results of the Return of Strategy and Control Group |
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271 | (1) |
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Appendix 4 Cumulative Return of Strategy and Control Group |
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272 | (1) |
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Appendix 5 Quarterly Return of 3 Strategies and Control Group |
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273 | (1) |
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Appendix 6 Cumulative Return of 3 Strategies and Control Group |
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274 | (1) |
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274 | (5) |
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Part V Techniques in Data Visualization and Database |
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279 | (32) |
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14.1 Data Visualization Fundamentals |
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279 | (2) |
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14.2 Introduction to Python Visualization Tools |
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281 | (15) |
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14.3 Data Distribution Chart |
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296 | (9) |
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14.4 Financial Data Case Analysis |
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305 | (4) |
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309 | (2) |
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310 | (1) |
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15 Interacting with a MongoDB Database from a Python Function in AWS Lambda |
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311 | (18) |
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311 | (5) |
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316 | (5) |
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321 | (8) |
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326 | (3) |
Index |
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329 | |