Title :
Computational learning techniques for intraday FX trading using popular technical indicators
Author :
Dempster, M.A.H. ; Payne, Tom W. ; Romahi, Yazann ; Thompson, G.W.P.
Author_Institution :
Centre for Financial Res., Cambridge Univ., UK
fDate :
7/1/2001 12:00:00 AM
Abstract :
We consider strategies which use a collection of popular technical indicators as input and seek a profitable trading rule defined in terms of them. We consider two popular computational learning approaches, reinforcement learning and genetic programming, and compare them to a pair of simpler methods: the exact solution of an appropriate Markov decision problem, and a simple heuristic. We find that although all methods are able to generate significant in-sample and out-of-sample profits when transaction costs are zero, the genetic algorithm approach is superior for non-zero transaction costs, although none of the methods produce significant profits at realistic transaction costs. We also find that there is a substantial danger of overfitting if in-sample learning is not constrained
Keywords :
Markov processes; foreign exchange trading; genetic algorithms; learning (artificial intelligence); Markov decision; computational learning; foreign exchange trading; genetic algorithm; genetic programming; heuristic; reinforcement learning; technical trading; transaction costs; Algorithm design and analysis; Artificial intelligence; Costs; Exchange rates; Frequency; Genetic algorithms; Genetic programming; Learning; Linear programming; Testing;
Journal_Title :
Neural Networks, IEEE Transactions on