Incorporating Signals into Optimal Trading
Optimal trading is a recent field of research which was initiated by Almgren, Chriss, Bertsimas and Lo in the late 90's. Its main application is slicing large trading orders, in the interest of minimizing trading costs and potential perturbations of price dynamics due to liquidity shocks. The i...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
03.04.2017
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Subjects | |
Online Access | Get full text |
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Summary: | Optimal trading is a recent field of research which was initiated by Almgren,
Chriss, Bertsimas and Lo in the late 90's. Its main application is slicing
large trading orders, in the interest of minimizing trading costs and potential
perturbations of price dynamics due to liquidity shocks. The initial
optimization frameworks were based on mean-variance minimization for the
trading costs. In the past 15 years, finer modelling of price dynamics, more
realistic control variables and different cost functionals were developed. The
inclusion of signals (i.e. short term predictors of price dynamics) in optimal
trading is a recent development and it is also the subject of this work.
We incorporate a Markovian signal in the optimal trading framework which was
initially proposed by Gatheral, Schied, and Slynko [21] and provide results on
the existence and uniqueness of an optimal trading strategy. Moreover, we
derive an explicit singular optimal strategy for the special case of an
Ornstein-Uhlenbeck signal and an exponentially decaying transient market
impact. The combination of a mean-reverting signal along with a market impact
decay is of special interest, since they affect the short term price variations
in opposite directions.
Later, we show that in the asymptotic limit were the transient market impact
becomes instantaneous, the optimal strategy becomes continuous. This result is
compatible with the optimal trading framework which was proposed by Cartea and
Jaimungal [10].
In order to support our models, we analyse nine months of tick by tick data
on 13 European stocks from the NASDAQ OMX exchange. We show that orderbook
imbalance is a predictor of the future price move and it has some
mean-reverting properties. From this data we show that market participants,
especially high frequency traders, use this signal in their trading strategies. |
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DOI: | 10.48550/arxiv.1704.00847 |