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Advances in Financial Machine Learning 1st Edition, Kindle Edition
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Learn to understand and implement the latest machine learning innovations to improve your investment performance
Machine learning (ML) is changing virtually every aspect of our lives. Today, ML algorithms accomplish tasks that – until recently – only expert humans could perform. And finance is ripe for disruptive innovations that will transform how the following generations understand money and invest.
In the book, readers will learn how to:
- Structure big data in a way that is amenable to ML algorithms
- Conduct research with ML algorithms on big data
- Use supercomputing methods and back test their discoveries while avoiding false positives
Advances in Financial Machine Learning addresses real life problems faced by practitioners every day, and explains scientifically sound solutions using math, supported by code and examples. Readers become active users who can test the proposed solutions in their individual setting.
Written by a recognized expert and portfolio manager, this book will equip investment professionals with the groundbreaking tools needed to succeed in modern finance.
- ISBN-13978-1119482086
- Edition1st
- PublisherWiley
- Publication dateFebruary 2, 2018
- LanguageEnglish
- File size15763 KB
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Editorial Reviews
Review
"In his new book Advances in Financial Machine Learning, noted financial scholar Marcos López de Prado strikes a well-aimed karate chop at the naive and often statistically overfit techniques that are so prevalent in the financial world today. He points out that not only are business-as-usual approaches largely impotent in today's high-tech finance, but in many cases they are actually prone to lose money. But López de Prado does more than just expose the mathematical and statistical sins of the finance world. Instead, he offers a technically sound roadmap for finance professionals to join the wave of machine learning. What is particularly refreshing is the author's empirical approach ― his focus is on real-world data analysis, not on purely theoretical methods that may look pretty on paper but which in many cases are largely ineffective in practice. The book is geared to finance professionals who are already familiar with statistical data analysis techniques, but it is well worth the effort for those who want to do real state-of-the-art work in the field."
―Dr. David H. Bailey, former Complex Systems Lead, Lawrence Berkeley National Laboratory. Co-discoverer of the BBP spigot algorithm
"Finance has evolved from a compendium of heuristics based on historical financial statements to a highly sophisticated scientific discipline relying on computer farms to analyze massive data streams in real time. The recent highly impressive advances in machine learning (ML) are fraught with both promise and peril when applied to modern finance. While finance offers up the non-linearities and large data sets upon which ML thrives, it also offers up noisy data and the human element which presently lie beyond the scope of standard ML techniques. To err is human but if you really want to f**k things up, use a computer. Against this background, Dr. López de Prado has written the first comprehensive book describing the application of modern ML to financial modeling. The book blends the latest technological developments in ML with critical life lessons learned from the author's decades of financial experience in leading academic and industrial institutions. I highly recommend this exciting book to both prospective students of financial ML and the professors and supervisors who teach and guide them."
―Prof. Peter Carr, Chair of the Finance and Risk Engineering Department, NYU Tandon School of Engineering
"Marcos is a visionary who works tirelessly to advance the finance field. His writing is comprehensive and masterfully connects the theory to the application. It is not often you find a book that can cross that divide. This book is an essential read for both practitioners and technologists working on solutions for the investment community."
―Landon Downs, President and co-Founder, 1QBit
"Academics who want to understand modern investment management need to read this book. In it, Marcos Lopez de Prado explains how portfolio managers use machine learning to derive, test and employ trading strategies. He does this from a very unusual combination of an academic perspective and extensive experience in industry allowing him to both explain in detail what happens in industry and to explain how it works. I suspect that some readers will find parts of the book that they do not understand or that they disagree with, but everyone interested in understanding the application of machine learning to finance will benefit from reading this book."
―Prof. David Easley, Cornell University. Chair of the NASDAQ-OMX Economic Advisory Board
"For many decades, finance has relied on overly simplistic statistical techniques to identify patterns in data. Machine learning promises to change that by allowing researchers to use modern non-linear and highly-dimensional techniques, similar to those used in scientific fields like DNA analysis and astrophysics. At the same time, applying those machine learning algorithms to model financial problems would be dangerous. Financial problems require very distinct machine learning solutions. Dr. López de Prado's book is the first one to characterize what makes standard machine learning tools fail when applied to the field of finance, and the first one to provide practical solutions to unique challenges faced by asset managers. Everyone who wants to understand the future of finance should read this book."
―Prof. Frank Fabozzi, EDHEC Business School. Editor of The Journal of Portfolio Management
"This is a welcome departure from the knowledge hoarding that plagues quantitative finance. López de Prado defines for all readers the next era of finance: industrial scale scientific research powered by machines."
―John Fawcett, Founder and CEO, Quantopian
"Marcos has assembled in one place an invaluable set of lessons and techniques for practitioners seeking to deploy machine learning techniques in finance. If machine learning is a new and potentially powerful weapon in the arsenal of quantitative finance, Marcos' insightful book is laden with useful advice to help keep a curious practitioner from going down any number of blind alleys, or shooting oneself in the foot."
―Ross Garon, Head of Cubist Systematic Strategies. Managing Director, Point72 Asset Management
"The first wave of quantitative innovation in finance was led by Markowitz optimization. Machine Learning is the second wave and it will touch every aspect of finance. López de Prado's Advances in Financial Machine Learning is essential for readers who want to be ahead of the technology rather than being replaced by it."
―Prof. Campbell Harvey, Duke University. Former President of the American Finance Association
"The complexity inherent to financial systems justifies the application of sophisticated mathematical techniques. Advances in Financial Machine Learning is an exciting book that unravels a complex subject in clear terms. I wholeheartedly recommend this book to anyone interested in the future of quantitative investments."
―Prof. John C. Hull, University of Toronto, Author of Options, Futures, and other Derivatives
"Prado's book clearly illustrates how fast this world is moving, and how deep you need to dive if you are to excel and deliver top of the range solutions and above the curve performing algorithms... Prado's book is clearly at the bleeding edge of the machine learning world."
―Irish Tech News
"Financial data is special for a key reason: The markets have only one past. There is no 'control group', and you have to wait for true out-of-sample data. Consequently, it is easy to fool yourself, and with the march of Moore's Law and the new machine learning, it's easier than ever. López de Prado explains how to avoid falling for these common mistakes. This is an excellent book for anyone working, or hoping to work, in computerized investment and trading."
―Dr. David J. Leinweber, Former Managing Director, First Quadrant, Author of Nerds on Wall Street: Math, Machines and Wired Markets
"In his new book, Dr. López de Prado demonstrates that financial machine learning is more than standard machine learning applied to financial datasets. It is an important field of research in its own right. It requires the development of new mathematical tools and approaches, needed to address the nuances of financial datasets. I strongly recommend this book to anyone who wishes to move beyond the standard Econometric toolkit."
―Dr. Richard R. Lindsey, Managing Partner, Windham Capital Management, Former Chief Economist, U.S. Securities and Exchange Commission
"Dr. Lopez de Prado, a well-known scholar and an accomplished portfolio manager who has made several important contributions to the literature on machine learning (ML) in finance, has produced a comprehensive and innovative book on the subject. He has illuminated numerous pitfalls awaiting anyone who wishes to use ML in earnest, and he has provided much needed blueprints for doing it successfully. This timely book, offering a good balance of theoretical and applied findings, is a must for academics and practitioners alike."
―Prof. Alexander Lipton, Connection Science Fellow, Massachusetts Institute of Technology. Risk's Quant of the Year (2000)
"How does one make sense of todays’ financial markets in which complex algorithms route orders, financial data is voluminous, and trading speeds are measured in nanoseconds? In this important book, Marcos López de Prado sets out a new paradigm for investment management built on machine learning. Far from being a 'black box' technique, this book clearly explains the tools and process of financial machine learning. For academics and practitioners alike, this book fills an important gap in our understanding of investment management in the machine age."
―Prof. Maureen O'Hara, Cornell University. Former President of the American Finance Association
"Marcos López de Prado has produced an extremely timely and important book on machine learning. The author's academic and professional first-rate credentials shine through the pages of this book - indeed, I could think of few, if any, authors better suited to explaining both the theoretical and the practical aspects of this new and (for most) unfamiliar subject. Both novices and experienced professionals will find insightful ideas, and will understand how the subject can be applied in novel and useful ways. The Python code will give the novice readers a running start, and will allow them to gain quickly a hands-on appreciation of the subject. Destined to become a classic in this rapidly burgeoning field."
―Prof. Riccardo Rebonato, EDHEC Business School. Former Global Head of Rates and FX Analytics at PIMCO
"A tour de force on practical aspects of machine learning in finance brimming with ideas on how to employ cutting edge techniques, such as fractional differentiation and quantum computers, to gain insight and competitive advantage. A useful volume for finance and machine learning practitioners alike."
―Dr. Collin P. Williams, Head of Research, D-Wave Systems
From the Inside Flap
Today's machine learning (ML) algorithms have conquered the major strategy games, and are routinely used to execute tasks once only possible by a limited group of experts. Over the next few years, ML algorithms will transform finance beyond anything we know today. Advances in Financial Machine Learning was written for the investment professionals and data scientists at the forefront of this evolution.
This one-of-a-kind, practical guidebook is your go-to resource of authoritative insight into using advanced ML solutions to overcome real-world investment problems. It demystifies the entire subject and unveils cutting-edge ML techniques specific to investing. With step-by-step clarity and purpose, it quickly brings you up to speed on fully proven approaches to data analysis, model research, and discovery evaluation. Then, it shines a light on the nuanced details behind innovative ways to extract informative features from financial data. To streamline implementation, it gives you valuable recipes for high-performance computing systems optimized to handle this type of financial data analysis.
Advances in Financial Machine Learning crosses the proverbial divide that separates academia and the industry. It does not advocate a theory merely because of its mathematical beauty, and it does not propose a solution just because it appears to work. The author transmits the kind of knowledge that only comes from experience, formalized in a rigorous manner.
This turnkey guide is designed to be immediately useful to the practitioner by featuring code snippets and hands-on exercises that facilitate the quick absorption and application of best practices in the real world.
Stop guessing and profit off data by:
- Tackling today's most challenging aspects of applying ML algorithms to financial strategies, including backtest overfitting
- Using improved tactics to structure financial data so it produces better outcomes with ML algorithms
- Conducting superior research with ML algorithms as well as accurately validating the solutions you discover
- Learning the tricks of the trade from one of the largest ML investment managers
Put yourself ahead of tomorrow's competition today with Advances in Financial Machine Learning.
From the Back Cover
Praise for ADVANCES in FINANCIAL MACHINE LEARNING
"Dr. López de Prado has written the first comprehensive book describing the application of modern ML to financial modeling. The book blends the latest technological developments in ML with critical life lessons learned from the author's decades of financial experience in leading academic and industrial institutions. I highly recommend this exciting book to both prospective students of financial ML and the professors and supervisors who teach and guide them."
PROF. PETER CARR, Chair of the Finance and Risk Engineering Department, NYU Tandon School of Engineering
"Financial problems require very distinct machine learning solutions. Dr. López de Prado's book is the first one to characterize what makes standard machine learning tools fail when applied to the field of finance, and the first one to provide practical solutions to unique challenges faced by asset managers. Everyone who wants to understand the future of finance should read this book."
PROF. FRANK FABOZZI, EDHEC Business School; Editor of The Journal of Portfolio Management
"Marcos has assembled in one place an invaluable set of lessons and techniques for practitioners seeking to deploy machine learning methods in finance. Marcos's insightful book is laden with useful advice to help keep a curious practitioner from going down any number of blind alleys, or shooting oneself in the foot."
ROSS GARON, Head of Cubist Systematic Strategies; Managing Director, Point72 Asset Management
"The first wave of quantitative innovation in finance was led by Markowitz optimization. Machine learning is the second wave and it will touch every aspect of finance. López de Prado's Advances in Financial Machine Learning is essential for readers who want to be ahead of the technology rather than being replaced by it."
PROF. CAMPBELL HARVEY, Duke University; Former President of the American Finance Association
"The author's academic and professional first-rate credentials shine through the pages of this book indeed, I could think of few, if any, authors better suited to explaining both the theoretical and the practical aspects of this new and (for most)unfamiliar subject. Destined to become a classic in this rapidly burgeoning field."
PROF. RICCARDO REBONATO, EDHEC Business School; Former Global Head of Rates and FX Analytics at PIMCO
About the Author
Product details
- ASIN : B079KLDW21
- Publisher : Wiley; 1st edition (February 2, 2018)
- Publication date : February 2, 2018
- Language : English
- File size : 15763 KB
- Text-to-Speech : Enabled
- Screen Reader : Supported
- Enhanced typesetting : Enabled
- X-Ray : Not Enabled
- Word Wise : Not Enabled
- Print length : 633 pages
- Best Sellers Rank: #459,048 in Kindle Store (See Top 100 in Kindle Store)
- #15 in Pattern Recognition
- #44 in Machine Theory (Kindle Store)
- #106 in Computer Vision & Pattern Recognition
- Customer Reviews:
About the author

Marcos López de Prado is a hedge fund manager, entrepreneur, inventor, and professor. He has helped modernize finance for the past 25 years, by pioneering machine learning and supercomputing methods, and by developing statistical tests that identify false investment strategies (false positives). In recognition of this work, Marcos has received various scientific awards, including the National Award for Academic Excellence (1999) by the Kingdom of Spain, the Quant Researcher of the Year Award (2019) by The Journal of Portfolio Management, and the Buy-Side Quant of the Year Award (2021) by Risk.net. For five consecutive years, SSRN has ranked him as the most-read author in Economics.
Marcos serves currently as global head of quantitative research and development at the Abu Dhabi Investment Authority (ADIA), one of the largest sovereign wealth funds, and is a founding board member of ADIA Lab, Abu Dhabi's center for research in data and computational sciences. Before ADIA, he founded True Positive Technologies LP (TPT), a firm that researches and develops investment IP. TPT has advised clients with a combined AUM in excess of USD 1 trillion, and has licensed and sold several patents to some of the largest investment funds in 8-figure dollar deals. Before TPT, Marcos was a partner and the first head of machine learning at AQR Capital Management. He also founded and led Guggenheim Partners’ Quantitative Investment Strategies business, where he managed up to USD 13 billion in assets, and delivered an audited risk-adjusted return (information ratio) of 2.3.
Concurrently with the management of multibillion-dollar funds, since 2011 Marcos has been a research fellow at Lawrence Berkeley National Laboratory (U.S. Department of Energy, Office of Science). He has published dozens of scientific articles on machine learning and supercomputing in the leading academic journals, is a founding co-editor of The Journal of Financial Data Science, and has testified before the U.S. Congress on AI policy. Marcos is the author of several popular graduate textbooks, including Advances in Financial Machine Learning (Wiley, 2018) and Machine Learning for Asset Managers (Cambridge University Press, 2020). Marcos earned a PhD in financial econometrics (2003), and a second PhD in mathematical finance (2011) from Universidad Complutense de Madrid. He completed his post-doctoral research at Harvard University and Cornell University, where he is a professor. Marcos has an Erdős #2 (via Neil Calkin) and an Einstein #4.
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Customers find the book comprehensive and valuable. They say it's well worth the effort to read through. Opinions are mixed on the writing style, with some finding it well-written and thought-out, while others say it's hard to read and poorly written.
AI-generated from the text of customer reviews
Customers find the book's knowledge level high. They say it's the culmination of many fundamental and practical knowledge in Mathematics and Finance. Readers mention the book is densely packed with a wealth of practical methods and breaks down and offers alternatives to faulty models. They also say it forces them to build a theoretical and statistical framework. Overall, they say it's a great tool and reference manual to further the understanding of Machine Learning.
"...It is densely packed with a wealth of practical methods and breaks down and offers alternatives to faulty investing science." Read more
"Well-written, well-researched book that provides new insight in many areas; much better than your run-of-the-mill book that gives a cursory overview..." Read more
"A fantastic addition to finance literature with must read chapters on backtesting pitfalls, hierarchical risk parity, deflated Sharpe ratios,..." Read more
"This book is an essential addition to the machine learning and finance literature...." Read more
Customers find the book good, amazing, and worth the effort to read through. They say it's exceptional and immersive. Readers also mention the book progresses well, making it required reading for advanced practitioners.
"...Despite the diversity of subject matter, the book progresses well, building on and reusing early themes and then exploring domain specific topics..." Read more
"Well-written, well-researched book that provides new insight in many areas; much better than your run-of-the-mill book that gives a cursory overview..." Read more
"TLDR: the book is awesome, it really is on another level, and you will be stuck in the past if you don't ingest this book...." Read more
"...That alone was worth the read." Read more
Customers find the code snippets throughout the book very helpful and useful. They also say the chapters are clear, concise, and full of useful references. Readers mention the book is highly challenging but not incomprehensible.
"...to be at the perfect level where it's highly challenging, but not incomprehensible...." Read more
"...valuable reference even without the code snippets, but he provides functional code and even tools to make it work on large datasets...." Read more
"...The chapters are clear, concise, and full of useful references...." Read more
"...References, exercises, code snippets, mathematical research, and a widespread bibliography create the ecosystem for many to learn from...." Read more
Customers have mixed opinions about the writing style. Some mention it's well-written, well-researched, and engaging. Others say it's hard to read, poorly written, and has odd syntax.
"...Chapter 1 and before, was really hard for me to read... it felt like the author is arrogant praising himself for his glorious knowledge while..." Read more
"Well-written, well-researched book that provides new insight in many areas; much better than your run-of-the-mill book that gives a cursory overview..." Read more
"...provided beyond unmotivated definitions, and those that are have an odd syntax and inconsistent type checking...." Read more
"...The book isn't exactly an easy read, but there is a wealth of Python code to help the reader follow the author's logic...." Read more
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A new dawn on Algorithmic Trading!
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Top reviews from the United States
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The purpose of this book is not to explain how to apply Deep Learning to make money, but rather to lay a solid foundation of how to invest in a scientifically rigorous fashion given the modern machine learning toolset and access to PBs of data. In many cases, rather than focussing on the specifics of any given model, Dr. Lopez de Prado focuses on generating and selecting useful features.
The book, which is a hybrid of a textbook and a manual, explains using both formal mathematics and empirical evidence why many of the assumptions about Machine Learning applied to the financial world are wrong and follows through with rigorous and practical solutions. For example, one of the most common false assumptions addressed in the book is that of IID samples in financial time series data.
Dr. Lopez de Prado manages to pull together ideas from a wide spectrum of academic disciplines including mathematics, econometrics, machine learning, computer science, information theory, and physics to build a strong scientific basis upon which to algorithmically invest. Despite the diversity of subject matter, the book progresses well, building on and reusing early themes and then exploring domain specific topics like market microstructure and quantum computing. Source code to implement many of the methods is provided as a practical toolkit to test out the claims presented. The thorough use of references is particularly helpful as it keeps the content fairly short and to the point.
Speed reading not recommended. Using a programming analogy, the mathematical notation is more reminiscent of the explicit verbosity of C++ than that of python (which is used in the book and is meant to be concise). It's not much of a problem but be aware the information content is dense.
Something that's mentioned but not explored is how to make use of “alternative datasets”. Given many of the advances in the wider realm of ML have been around data you don’t get from exchanges, it would be nice if some helpful pointers or references for dealing with alternative data were included. That said, it's not the end of the world given the wealth of resources online for analyzing text, image, and video data.
Buy this book if you're an experienced programmer getting into Finance or a Financial Professional looking to strengthen your algorithmic understanding. It is densely packed with a wealth of practical methods and breaks down and offers alternatives to faulty investing science.
Highly recommended!
An overview of topics follows, focusing on things I found the most useful.
Part 1: Data Analysis (chapters 1-5)
Chapter 1 includes a list of reasons that financial ML projects usually fail. It's nice to have the warning at the outset of what traps to avoid.
Chapter 2 discusses ways to represent market information; there are surprises here you wouldn't think of on your own, such as "Tick Imbalance Bars", which show up here only because the author has significant experience in HFT (cf. one of his earlier books on market microstructure.)
Chapter 3 on Labelling addresses some issues I ran into myself working on dataset preparation. How to do appropriate labelling in computational finance isn't as obvious as in some other ML domains. Chapter 4 continues with appropriate weights for data samples, which help deal with data that violates the IID assumption.
I knew the basics of ARIMA processes and the idea of time series stationarity before reading this book, but Chapter 5 introduced me to fractionally differentiated time series, which appears in earlier literature in the 1980s, but which somehow I had missed. This is important in dealing with time series with long memory.
Part 2, Modeling (chapters 6-9)
Part 2 has a different focus than some readers might expect, talking about modeling in general, but without mentioning specific ML models, such as linear regressions, neural nets, random forests, etc. The book states in its introduction that it is intended to be model-agnostic, and covers issues affecting modeling in general.
Chapter 6, for instance, is on ensembles. Chapter 7 deals with cross-validation in financial time series, which is a crucial topic for any model evaluation, and chapter 8 talks about feature importance. Chapter 9 is on hyper-parameter tuning.
Part 3: Backtesting (chapters 10-16).
Chapter 10 covers bet sizing.
Chapter 11-16 discuss backtesting in great detail, including the dangers involved, good statistics to compute, synthetic data use, more on cross-validation, and strategy risk and asset allocation/optimization.
Part 4 (chapters 17-19) is called "Useful Financial Features" -- it's about feature engineering, and has a bunch of features that will be new to many readers (there are "entropy features" and "microstructure features", for instance; this isn't just the basic stuff related to returns and volatility.
Part 5 (chapters 20-22) seemed the least useful to me, on high-performance computing, since I personally was already aware of this stuff and there is a lot more to say on the topic than these few chapters could cover.
Top reviews from other countries
What I liked in particular is the crystal clear way of conveying the applications of ML methods to the respective fields in finance and their limitations, e.g. applying the fractional differencing to financial time series to maintain the stationarity while not compromising on memory, RANSAC method for outliers detection, introducing a novel Deflated Sharpe Ratio concept to account for controlling of experiments, hence, reestablishing rigorous mathematical standards in finance, a true characteristic befitting an academic discipline.
And this is just the tip of the iceberg. Curious researcher may want to check out the list of peer reviewed scientific publications by Dr. de Prado to comprehend the research contribution he had already made and is still making to the field of Finance (one of the recent publications relates to exploratory causal analysis, a discipline at the intersection of experimental design, statistics and CS pertaining to learning cause and effect relationships).





