Navigating the Factor Zoo - Michael Zhang, Tao Lu, Chuan Shi

Navigating the Factor Zoo

The Science of Quantitative Investing
Buch | Softcover
296 Seiten
2024
Routledge (Verlag)
978-1-032-76841-0 (ISBN)
41,10 inkl. MwSt
Bridging the gap between theoretical asset pricing and industry practices in factors and factor investing, Zhang et al. provides a comprehensive treatment of factors, along with industry insights on practical factor development. A useful resource for investment management professionals and students in quantitative finance.
Bridging the gap between theoretical asset pricing and industry practices in factors and factor investing, Zhang et al. provides a comprehensive treatment of factors, along with industry insights on practical factor development.

Chapters cover a wide array of topics, including the foundations of quantamentals, the intricacies of market beta, the significance of statistical moments, the principles of technical analysis, and the impact of market microstructure and liquidity on trading. Furthermore, it delves into the complexities of tail risk and behavioral finance, revealing how psychological factors affect market dynamics. The discussion extends to the sophisticated use of option trading data for predictive insights and the critical differentiation between outcome uncertainty and distribution uncertainty in financial decision-making. A standout feature of the book is its examination of machine learning's role in factor investing, detailing how it transforms data preprocessing, factor discovery, and model construction. Overall, this book provides a holistic view of contemporary financial markets, highlighting the challenges and opportunities in harnessing alternative data and machine learning to develop robust investment strategies.

This book would appeal to investment management professionals and trainees. It will also be of use to graduate and upper undergraduate students in quantitative finance, factor investing, asset management and/or trading.

Michael Zhang is the founder of Super Quantum Fund. He has over 20 years of experience in quantitative investing. He publishes in the most prestigious academic journals and has been highly cited. He holds a PhD from MIT, an MSc, and two bachelor’s degrees from Tsinghua University. Tao Lu is the CEO of Super Quantum Fund. He has extensive practical experience in portfolio management through quantitative methods and leading quantitative research teams. He holds a PhD from the Chinese University of Hong Kong and two bachelor’s degrees from Tsinghua University. Chuan Shi is the chief data scientist at Beijing Liangxin Investment Management, specializing in factor investing, portfolio allocation, and risk management. He holds a PhD from MIT and bachelor's and master's degrees from Tsinghua University. He is the lead author of "Factor Investing: Methodology and Practice."

Table of Contents

Preface

Chapter 1. Factor Investing

Chapter 2. Quantamentals

Chapter 3. Statistical Moments as Factors

Chapter 4. Market Beta

Chapter 5. Technical Analysis Factors

Chapter 6. Microstructure and Liquidity

Chapter 7. Tail Risk

Chapter 8. Behavioral Finance

Chapter 9. Option Information

Chapter 10. Uncertainty

Chapter 11. Alternative Data

Chapter 12. Machine Learning in Factor Investing

Epilogue

Erscheinungsdatum
Zusatzinfo 13 Tables, black and white; 21 Halftones, black and white; 21 Illustrations, black and white
Verlagsort London
Sprache englisch
Maße 156 x 234 mm
Themenwelt Mathematik / Informatik Mathematik Angewandte Mathematik
Wirtschaft Betriebswirtschaft / Management Finanzierung
Wirtschaft Volkswirtschaftslehre Ökonometrie
ISBN-10 1-032-76841-X / 103276841X
ISBN-13 978-1-032-76841-0 / 9781032768410
Zustand Neuware
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