Abstract
The main challenge in Stock Exchange is choose stocks with uptrend in order to compose a profitable stock portfolio and also ensure security of investment, since the risk in stock investment is considered high. One tool that can help investors to identify the stocks behavior and help to select the right stocks becomes essential. The application of intelligent techniques, especially Artificial Neural Networks to forecast trends in stock prices generated good results. Thus, in this paper was created hybrid architecture, composed by the Markowitz Model and an Artificial Neural Network Multilayer Perceptron, in order to support the investor. For the experiments, the information of the ten most traded stocks on Stock Exchange of São Paulo was extracted. The hybrid architecture is given as follows: Processing Stock Information in Markowitz Model then result is presented as one of input variables of neural network. For analyze the results, was applied an investment simulator, where the investment return obtained point to the use of hybrid architecture in investments.
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References
Bodie, Z., Kane, A., Alan, J.: Investments, 8th edn. The MacGraw-Hill Companies Inc., New York (2009)
Li, Z., Ni, W.: Research on Optimizing Security Investment Combination Based on PSO. Published in Second International Workshop on Knowledge Discovery and Data Minings. IEEE (2009), doi: 10.1109/WKDD
Markowitz, H. M.: Portfolio Selection. Journal of Finance 7, 77 (1952)
Kuang, L., Chien, L.: A Fuzzy Decision Maker for Portfolio Problems. IEEE (2010)
Martinez, L.C., Hora, D.N., Palotti, J.R.M., Meira, W.J., Pappa, G.L.: From an Artificial Neural Network to a Stock Market Day-Trading System: A Case Study on the BM&F BOVESPA. In: Proceedings of International Joint Conference on Neural Networks, Atlanta, Georgia, USA. IEEE (2009)
Khan, A.U., Bandopadhyaya, T.K., Sharma, S.S.: Technical Indicators Based Hybrid Model gives better returns on Investments as Compared to BSE-30 Index. In: Third International Conference on Knowledge Discovery and Data Mining. IEEE (2010)
Hanif, T., Tahersima, M., Morteza, F., Navid, H.: Forecasting Stock Exchange Movements Using Neural Networks: A Case Study. In: International Conference on Future Computer Sciences and Application. IEEE (2011)
Gao, Z., XU, X.: Stock Bubbles’ Nature: A Cluster Analysis of Chinese Shanghai A Share Based on SOM Neural Network. In: International Conference on Business Intelligence and Financial Engineering. IEEE (2009)
Khan, A.U., Bandopad, T.K., Sharma, S.: Classification andIdentification of Stocks using SOM and Genetic Algorithm based Backpropagation Neural Network. IEEE (2008)
Haykin, S.: Neural Networks: A comprehensive Foundation, New York (1994)
Mendel, J.M., Mclaren, R.W.: Reinforcement-learning control and pattern recognition systems. In: Adaptive, Learning and Pattern Recognition Systems, vol. 8, pp. 287–318. Academic Press, New York (1970)
Bigus, J.P.: Data Mining with Neural Network: Solving Business Problems from Applications Development to Decision Support. Mcgraw-Hill (1996)
Pereira, A.: Health and economic impact of posttransfusion hepatitis B and codt-effectiveness analysis of expanded HBV testing protocols of blood donors: a study focused on the European Union. The Journal Transfusion (2003)
http://www.palisade-br.com (acessed from May 18, 2011)
Aihua, W., Pochec, P.: Investigation of Data Transmission Logs Using the Best fit Package. In: Conference on Electrical & Computer Engineering. IEEE (2002)
Yang, G.: The Optimization Analysis of Supply Chain Reliability Based on Economic Constraints. IEEE (2011)
http://www.lindo.com (accessed from May 19, 2011)
Wang, Q., Liu, X., An, S.: Data Analysis and capital budgeting model. In: International Conference on Intelligent Human-Machine Systems and Cybernetics. IEEE (2009)
Wang, T., Yang, X.: The Study of Model for Portfolio Investment Based on Ant Colony Algorithm. In: International Conference on Future Computer/Communication. IEEE (2009)
http://www.bmfbovespa.com.br/ (accessed in May 19, 2011)
Oliveira, E.M.J., Ludermir, T.B.: Forecasting the IBOVESPA using NARX networks and random walk mode. In: SBRN. IEEE (2002)
Fox, E., Sudderth, E.B., Jordan, M.I., Willsky, A.S.: Bayesian Nonparametric Inference of Switching Dynamic Linear Models. IEEE Transactions on Signal Processing (2011)
http://folhainvest.folha.com.br/ (accessed from May 23-26)
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Kaupa, P.H., Sassi, R.J., Ramalho, E.B. (2012). Hybrid Architecture to Predict Trends at Stock Exchange of São Paulo: Markowitz Model and a Multilayer Perceptron. In: Yin, H., Costa, J.A.F., Barreto, G. (eds) Intelligent Data Engineering and Automated Learning - IDEAL 2012. IDEAL 2012. Lecture Notes in Computer Science, vol 7435. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-32639-4_43
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DOI: https://doi.org/10.1007/978-3-642-32639-4_43
Publisher Name: Springer, Berlin, Heidelberg
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