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Long gone are the times when investors could make decisions based
on intuition. Modern asset management draws on a wide-range of
fields beyond financial theory: economics, financial accounting,
econometrics/statistics, management science, operations research
(optimization and Monte Carlo simulation), and more recently, data
science (Big Data, machine learning, and artificial intelligence).
The challenge in writing an institutional asset management book is
that when tools from these different fields are applied in an
investment strategy or an analytical framework for valuing
securities, it is assumed that the reader is familiar with the
fundamentals of these fields. Attempting to explain strategies and
analytical concepts while also providing a primer on the tools from
other fields is not the most effective way of describing the asset
management process. Moreover, while an increasing number of
investment models have been proposed in the asset management
literature, there are challenges and issues in implementing these
models. This book provides a description of the tools used in asset
management as well as a more in-depth explanation of specialized
topics and issues covered in the companion book, Fundamentals of
Institutional Asset Management. The topics covered include the
asset management business and its challenges, the basics of
financial accounting, securitization technology, analytical tools
(financial econometrics, Monte Carlo simulation, optimization
models, and machine learning), alternative risk measures for asset
allocation, securities finance, implementing quantitative research,
quantitative equity strategies, transaction costs, multifactor
models applied to equity and bond portfolio management, and
backtesting methodologies. This pedagogic approach exposes the
reader to the set of interdisciplinary tools that modern asset
managers require in order to extract profits from data and
processes.
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.
Learn the principles of quantum machine learning and how to apply
them in finance. Purchase of the print or Kindle book includes a
free eBook in PDF format. Key Features Discover how to solve
optimisation problems on quantum computers that can provide a
speedup edge over classical methods Use methods of analogue and
digital quantum computing to build powerful generative models
Create the latest algorithms that work on Noisy Intermediate-Scale
Quantum (NISQ) computers Book DescriptionWith recent advances in
quantum computing technology, we finally reached the era of Noisy
Intermediate-Scale Quantum (NISQ) computing. NISQ-era quantum
computers are powerful enough to test quantum computing algorithms
and solve hard real-world problems faster than classical hardware.
Speedup is so important in financial applications, ranging from
analysing huge amounts of customer data to high frequency trading.
This is where quantum computing can give you the edge. Quantum
Machine Learning and Optimisation in Finance shows you how to
create hybrid quantum-classical machine learning and optimisation
models that can harness the power of NISQ hardware. This book will
take you through the real-world productive applications of quantum
computing. The book explores the main quantum computing algorithms
implementable on existing NISQ devices and highlights a range of
financial applications that can benefit from this new quantum
computing paradigm. This book will help you be one of the first in
the finance industry to use quantum machine learning models to
solve classically hard real-world problems. We may have moved past
the point of quantum computing supremacy, but our quest for
establishing quantum computing advantage has just begun! What you
will learn Train parameterised quantum circuits as generative
models that excel on NISQ hardware Solve hard optimisation problems
Apply quantum boosting to financial applications Learn how the
variational quantum eigensolver and the quantum approximate
optimisation algorithms work Analyse the latest algorithms from
quantum kernels to quantum semidefinite programming Apply quantum
neural networks to credit approvals Who this book is forThis book
is for Quants and developers, data scientists, researchers, and
students in quantitative finance. Although the focus is on
financial use cases, all the methods and techniques are
transferable to other areas.
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