《A real-time adaptive trading system using genetic programming》.pdf
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Q UANTITATIVE F I N A N C E V O L U M E 1 (2001) 397–413 RE S E A R C H PA P E R
I N S T I T U T E O F P H Y S I C S P U B L I S H I N G
A real-time adaptive trading system
using genetic programming
M A H Dempster and C M Jones1
2
Centre for Financial Research , Judge Institute of Management, University of
Cambridge, Trumpington Street, Cambridge, CB2 1AG, UK
E-mail: mahd@jims.cam.ac.uk and cmj24@cam.ac.uk
Received 15 October 2000
Abstract
Technical analysis indicators are widely used by traders in financial and
commodity markets to predict future price levels and enhance trading
profitability. We have previously shown anumber of popular indicator-based
trading rules to be loss-making when applied individually in asystematic
manner. However, technical traders typically use combinations of abroad
range of technical indicators. Moreover, successful traders tend to adapt to
market conditions by ‘dropping’ trading rules as soon as they become
loss-making or when more profitable rules are found. In this paper we try to
emulate such traders by developing atrading system consisting of rules based
on combinations of different indicators at different frequencies and lags. An
initial portfolio of such rules is selected by agenetic algorithm applied to
number of indicators calculated on aset of US Dollar/British Pound spot
foreign exchange tick dat afrom 1994 to 1997 aggregated to various intraday
frequencies. The genetic algorithm is subsequently used at regular intervals
on out-of-sample dat ato provide new rules and afeedback system is utilized
to rebalance the rule portfolio, thus creating two levels of adaptivity. Despite
the individual indicators being generally loss-making over the dat
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