DocumentCode
1341532
Title
Sign Prediction and Volatility Dynamics With Hybrid Neurofuzzy Approaches
Author
Bekiros, Stelios D.
Author_Institution
Dept. of Econ., Eur. Univ. Inst., Florence, Italy
Volume
22
Issue
12
fYear
2011
Firstpage
2353
Lastpage
2362
Abstract
Reliable forecasting techniques for financial applications are important for investors either to make profit by trading or hedge against potential market risks. In this paper the efficiency of a trading strategy based on the utilization of a neurofuzzy model is investigated, in order to predict the direction of the market in case of FTSE100 and New York stock exchange returns. Moreover, it is demonstrated that the incorporation of the estimates of the conditional volatility changes, according to the theory of Bekaert and Wu (2000), strongly enhances the predictability of the neurofuzzy model, as it provides valid information for a potential turning point on the next trading day. The total return of the proposed volatility-based neurofuzzy model including transaction costs is consistently superior to that of a Markov-switching model, a feedforward neural network as well as of a buy & hold strategy. The findings can be justified by invoking either the “volatility feedback” theory or the existence of portfolio insurance schemes in the equity markets and are also consistent with the view that volatility dependence produces sign dependence. Thus, a trading strategy based on the proposed neurofuzzy model might allow investors to earn higher returns than the passive portfolio management strategy.
Keywords
Markov processes; economic forecasting; feedforward neural nets; insurance; investment; profitability; risk management; stock markets; FTSE100 returns; Markov-switching model; New York stock exchange returns; buy & hold strategy; conditional volatility changes; equity market; feedforward neural network; financial application; forecasting technique; hybrid neurofuzzy model; investors; market risks; neurofuzzy model predictability; portfolio insurance scheme; profitability; sign prediction; trading strategy; transaction costs; volatility dynamics; volatility feedback theory; Econometrics; Economic forecasting; Hybrid intelligent systems; Predictive models; Stock markets; Econometrics; economic forecasting; hybrid intelligent systems; stock markets; Artificial Intelligence; Data Mining; Databases, Factual; Forecasting; Fuzzy Logic; Models, Econometric; Models, Theoretical;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2011.2169497
Filename
6035788
Link To Document