Integrating High Volume Financial Datasets to Achieve Profitable and Interpretable Short Term Trading with the FTSE100 Index

During the financial crisis of 2009 traditional models have failed to provide satisfactory results. Lately many techniques have been proposed to overcome the deficiencies of traditional models but most of them deal with the examined financial indices as they are cut off from the rest global market. However, many late studies are indicating that such dependencies exist. The enormous number of the potential financial time series which could be integrated to trade a single financial index enables the characterization of this problem as a “big data” problem and raises the need for advanced dimensionality reduction techniques which should additionally be interpretable in order to extract meaningful conclusions. In the present paper, ESVM-Fuzzy Inference Trader is introduced. This technique is based on the hybrid methodology ESVM Fuzzy Inference which combines genetic algorithms and some deterministic methods to extract interpretable fuzzy rules from SVM classification models.

[1]  Efstratios F. Georgopoulos,et al.  Modelling and Trading the DJIA Financial Index Using Neural Networks Optimized with Adaptive Evolutionary Algorithms , 2012, EANN.

[2]  Seferina Mavroudi,et al.  A Hybrid Support Vector Fuzzy Inference System for the Classification of Leakage Current Waveforms Portraying Discharges , 2014 .

[3]  Wen-Jen Tsay,et al.  A Markov regime‐switching ARMA approach for hedging stock indices , 2011 .

[4]  James H. Garrett,et al.  Engineering applications of neural networks , 1993, J. Intell. Manuf..

[5]  Georgios Sermpinis,et al.  A hybrid genetic algorithm–support vector machine approach in the task of forecasting and trading , 2013 .

[6]  Małgorzata Doman,et al.  Dependencies between Stock Markets During the Period Including the Late-2000s Financial Crisis , 2012 .

[7]  Yixin Chen,et al.  Support vector learning for fuzzy rule-based classification systems , 2003, IEEE Trans. Fuzzy Syst..

[8]  D. Boyd,et al.  CRITICAL QUESTIONS FOR BIG DATA , 2012 .

[9]  Michael Graham,et al.  Short-term and long-term dependencies of the S&P 500 index and commodity prices , 2013 .

[10]  Georgios Sermpinis,et al.  Modelling and trading the realised volatility of the FTSE100 futures with higher order neural networks , 2013 .

[11]  Wei-Chang Yeh,et al.  Forecasting stock markets using wavelet transforms and recurrent neural networks: An integrated system based on artificial bee colony algorithm , 2011, Appl. Soft Comput..

[12]  Stergios Papadimitriou,et al.  Efficient and interpretable fuzzy classifiers from data with support vector learning , 2005, Intell. Data Anal..

[13]  Paulo J. G. Lisboa,et al.  Probability distributions, trading strategies and leverage: an application of Gaussian mixture models , 2004 .