\newcommand{\bm}[1]{\boldsymbol{#1}} \newcommand{\textm}[1]{\textsf{#1}} \newcommand{\textnormal}[1]{\textsf{#1}} \def\T{{\mkern-2mu\raise-1mu\mathsf{T}}} \newcommand{\R}{\mathbb{R}} % real numbers \newcommand{\E}{{\rm I\kern-.2em E}} \newcommand{\w}{\bm{w}} % bold w \newcommand{\bmu}{\bm{\mu}} % bold mu \newcommand{\bSigma}{\bm{\Sigma}} % bold mu \newcommand{\bigO}{O} %\mathcal{O} \renewcommand{\d}[1]{\operatorname{d}\!{#1}}

Frontmatter

Blurb

This comprehensive guide to the world of financial data modeling and portfolio design is a must-read for anyone looking to understand and apply portfolio optimization in a practical context. It bridges the gap between mathematical formulations and the design of practical numerical algorithms.

It explores a range of methods, from basic time series models to cutting-edge financial graph estimation approaches. The portfolio formulations span from Markowitz’s original 1952 mean–variance portfolio to more advanced formulations, including downside risk portfolios, drawdown portfolios, risk parity portfolios, robust portfolios, bootstrapped portfolios, index tracking, pairs trading, and deep-learning portfolios.

Enriched with a remarkable collection of numerical experiments and more than 200 figures, this is a valuable resource for researchers and finance industry practitioners. With slides, R and Python code examples, and exercise solutions available online, it serves as a textbook for portfolio optimization and financial data modeling courses, at advanced undergraduate and graduate level.

Endorsements

“Professor Palomar’s Portfolio Optimization: Theory and Application is a remarkable contribution to the field, bridging advanced optimization techniques with real-world portfolio design. Unlike traditional texts, it integrates heavy-tailed modeling, graph-based methods, and robust optimization with a practical, algorithmic focus. This book is an invaluable resource for those seeking a cutting-edge, computationally sound approach to portfolio management.”

— Marcos Lopez de Prado OMC PhD, Global Head of Quantitative R&D at Abu Dhabi Investment Authority, and Professor of Practice at Cornell University


“Daniel Palomar’s book is a hands-on guide to portfolio optimization at the research frontier. By integrating financial data modeling, code, equations, and real-world data, it bridges theory and practice. A must-read for aspiring data-driven portfolio managers and researchers seeking to stay updated with the latest advancements.”

— Kris Boudt, Ghent University, Vrije Universiteit Brussel and Vrije Universiteit Amsterdam


“An invaluable reference for single period portfolio optimization under heavy tails. Palomar emphasizes the connections between portfolio methods as well as their differences, and explores tools for ameliorating their flaws rather than glossing over them.”

— Peter Cotton, author of Microprediction: Building an Open AI Network


“Dan Palomar’s book is a comprehensive treatment of portfolio optimization, covering the complete range from traditional optimization to more sophisticated methods of robust portfolio construction and machine learning algorithms. Directed toward graduate students and quantitative asset managers, any practitioner who builds financial portfolios would be well served by knowing everything in this book.”

— Dev Joneja, Chief Risk Officer, ExodusPoint Capital Management

About the Author

Daniel P. Palomar is a Professor at the Hong Kong University of Science and Technology (HKUST).

Prof. Palomar has been recognized as a EURASIP Fellow (2024), an IEEE Fellow (2012), and, among others, has been awarded with the 2004/06 Fulbright Research Fellowship and the 2004, 2015, and 2020 Young Author Best Paper Awards by the IEEE Signal Processing Society.

His current research interests include data analytics, optimization methods, and deep learning in financial systems.

He is the author of many research articles and books, including Convex Optimization in Signal Processing and Communications. He has been a Guest Editor of the IEEE Journal of Selected Topics in Signal Processing 2016 Special Issue on “Financial Signal Processing and Machine Learning for Electronic Trading,” an Associate Editor of IEEE Transactions on Information Theory and of IEEE Transactions on Signal Processing, a Guest Editor of the IEEE Signal Processing Magazine 2010 Special Issue on “Convex Optimization for Signal Processing,” the IEEE Journal on Selected Areas in Communications 2008 Special Issue on “Game Theory in Communication Systems,” and the IEEE Journal on Selected Areas in Communications 2007 Special Issue on “Optimization of MIMO Transceivers for Realistic Communication Networks.”

Links to probe further: Home page, GitHub, YouTube channel, Google Scholar.