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Multi-Period Trading via Convex Optimization considers a basic
model of multi-period trading, which can be used to evaluate the
performance of a trading strategy. It describes a framework for
single-period optimization, where the trades in each period are
found by solving a convex optimization problem that trades off
expected return, risk, transaction cost and holding cost such as
the borrowing cost for shorting assets. It then describes a
multiperiod version of the trading method, where optimization is
used to plan a sequence of trades, with only the first one
executed, using estimates of future quantities that are unknown
when the trades are chosen. The single period method traces back to
Markowitz; the multiperiod methods trace back to model predictive
control. This monograph addresses the single-period and
multi-period methods in one simple framework, giving a clear
description of the development and the approximations made. The
methods described can be thought of as good ways to exploit
predictions, no matter how they are made. We have also developed a
companion open-source software library that implements many of the
ideas and methods described in the paper. Multi-Period Trading via
Convex Optimization collects in one place the basic definitions, a
careful description of the model, and discussion of how convex
optimization can be used in multi-period trading, all in a common
notation and framework. It provides the reader with a unified,
self-contained treatment, focusing on the practical issues that
arise in multi-period trading. It will benefit anyone interested in
the study of these methods and is also an ideal reference for a
quantitative trader, or someone who works with or for, or employs,
one.
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