Publication | Closed Access
Computational learning techniques for intraday FX trading using popular technical indicators
168
Citations
22
References
2001
Year
Algorithmic LearningBusiness AnalyticsMarket DesignIntraday Fx TradingPopular Technical IndicatorsData ScienceAlgorithmic TradingManagementComputational Learning TechniquesQuantitative ManagementHigh-frequency TradingPredictive AnalyticsTrading ModelForecastingFinanceExploration V ExploitationAutomated TradingFinancial EconomicsBusinessFinancial EngineeringDecision ScienceTransaction Costs
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.
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