DocumentCode :
238794
Title :
Two parameter update schemes for recurrent reinforcement learning
Author :
Jin Zhang ; Maringer, Dietmar
Author_Institution :
Fac. of Bus. & Econ, Univ. of Basel, Basel, Switzerland
fYear :
2014
fDate :
6-11 July 2014
Firstpage :
1449
Lastpage :
1453
Abstract :
Recurrent reinforcement learning (RRL) is a machine learning algorithm which has been proposed by researchers for constructing financial trading platforms. When an analysis of RRL trading performance is conducted using low frequency financial data (e.g. daily data), the weakening autocorrelation in price changes may lead to a decrease in trading profits as compared to its applications in high frequency trading. There therefore is a need to improve RRL for the purposes of daily equity trading. This paper presents two parameter update schemes (the `average elitist´ and the `multiple elitist´) for RRL. The purpose of the first scheme is to improve out-of-sample performance of RRL-type trading systems. The second scheme aims to exploit serial dependence in stock returns to improve trading performance, when traders deal with highly correlated stocks. Profitability and stability of the trading system are examined by using four groups of S&P stocks for the period January 2009 to December 2012. It is found that the Sharpe ratios of the stocks increase after we use the two parameter update schemes in the RRL trading system.
Keywords :
financial data processing; learning (artificial intelligence); stock markets; RRL algorithm; RRL trading performance; RRL-type trading systems; S&P stocks; Sharpe ratio; average elitist scheme; daily equity trading; financial trading platforms; high frequency trading; low frequency financial data; multiple elitist scheme; parameter update scheme; price change; profitability; recurrent reinforcement learning; stock returns; trading profits; Algorithm design and analysis; Companies; Correlation; Economics; Learning (artificial intelligence); Standards; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Evolutionary Computation (CEC), 2014 IEEE Congress on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6626-4
Type :
conf
DOI :
10.1109/CEC.2014.6900330
Filename :
6900330
Link To Document :
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