Generic placeholder image

International Journal of Sensors, Wireless Communications and Control

Editor-in-Chief

ISSN (Print): 2210-3279
ISSN (Online): 2210-3287

Research Article

TLBO-FLN: Teaching-Learning Based Optimization of Functional Link Neural Networks for Stock Closing Price Prediction

Author(s): Sarat Chandra Nayak*, Subhranginee Das and Mohammad Dilsad Ansari

Volume 10, Issue 4, 2020

Page: [522 - 532] Pages: 11

DOI: 10.2174/2210327909666191202113015

Price: $65

Abstract

Background and Objective: Stock closing price prediction is enormously complicated. Artificial Neural Networks (ANN) are excellent approximation algorithms applied to this area. Several nature-inspired evolutionary optimization techniques are proposed and used in the literature to search the optimum parameters of ANN based forecasting models. However, most of them need fine-tuning of several control parameters as well as algorithm specific parameters to achieve optimal performance. Improper tuning of such parameters either leads toward additional computational cost or local optima.

Methods: Teaching Learning Based Optimization (TLBO) is a newly proposed algorithm which does not necessitate any parameters specific to it. The intrinsic capability of Functional Link Artificial Neural Network (FLANN) to recognize the multifaceted nonlinear relationship present in the historical stock data made it popular and got wide applications in the stock market prediction. This article presents a hybrid model termed as Teaching Learning Based Optimization of Functional Neural Networks (TLBO-FLN) by combining the advantages of both TLBO and FLANN.

Results and Conclusion: The model is evaluated by predicting the short, medium, and long-term closing prices of four emerging stock markets. The performance of the TLBO-FLN model is measured through Mean Absolute Percentage of Error (MAPE), Average Relative Variance (ARV), and coefficient of determination (R2); compared with that of few other state-of-the-art models similarly trained and found superior.

Keywords: Stock market prediction, functional link artificial neural network, teaching learning based optimization, artificial neural network, mean absolute percentage of error, average relative variance.

Graphical Abstract

[1]
Hsu MW, Lessmann S, Sung MC, Ma T, Johnson JE. Bridging the divide in financial market forecasting: Machine learners vs. financial economists. Expert Syst Appl 2016; 61: 215-34.
[http://dx.doi.org/10.1016/j.eswa.2016.05.033]
[2]
Kotha KK, Sahu B. Macroeconomic factors and the Indian stock market: Exploring long and short run relationships. Int J Econom Financ Issues 2016; 6(3): 1081-91.
[3]
Niaki STA, Hoseinzade S, Forecasting SP. 500 index using artificial neural networks and design of experiments. J Ind Eng Int 2013; 9(1): 1.
[http://dx.doi.org/10.1186/2251-712X-9-1]
[4]
Adhikari R, Agrawal RK. A combination of artificial neural network and random walk models for financial time series forecasting. Neural Comput Appl 2014; 24(6): 1441-9.
[http://dx.doi.org/10.1007/s00521-013-1386-y]
[5]
Liu HC, Lee YH, Lee MC. Forecasting china stock markets volatility via GARCH models under skewed-GED distribution. J Money Invest Bank 2009; 2009: 5-14.
[6]
Zhang GP. Time series forecasting using a hybrid ARIMA and neural network model. Neurocomputing 2003; 50: 159-75.
[http://dx.doi.org/10.1016/S0925-2312(01)00702-0]
[7]
Ghazali R, Hussain AJ, Nawi NM, Mohamad B. Nonstationary and stationary prediction of financial time series using dynamic ridge polynomial neural network. J Neurocomputing 2009; 72: 2359-67.
[http://dx.doi.org/10.1016/j.neucom.2008.12.005]
[8]
Pao YH, Takefuji Y. Functional-link net computing: theory, system architecture, and functionalities. Computer 1992; 25(5): 76-9.
[http://dx.doi.org/10.1109/2.144401]
[9]
Mishra BB, Dehuri S. Functional link artificial neural network for classification task in data mining. J Comput Sci 2007; 3: 948-55.
[http://dx.doi.org/10.3844/jcssp.2007.948.955]
[10]
Mishra BB, Dehuri S, Panda G, Dash PK. Fuzzy Swarm Net (FSN) for classification in data mining. CSI J Comput Sci Eng 2008; 5(2): 1-8.
[11]
Dehuri S, Cho SB. A hybrid genetic based functional link artificial neural network with a statistical comparison of classifiers over multiple datasets. Neural Comput Appl 2010; 19(2): 317-28.
[http://dx.doi.org/10.1007/s00521-009-0310-y]
[12]
Majhi R, Majhi B, Panda G. Development and performance evaluation of neural network classifiers for Indian internet shoppers. Expert Syst Appl 2012; 39(2): 2112-8.
[http://dx.doi.org/10.1016/j.eswa.2011.07.128]
[13]
Purwar S, Kar IN, Jha AN. On-line system identification of complex systems using Chebyshev neural networks. Appl Soft Comput 2007; 7(1): 364-72.
[http://dx.doi.org/10.1016/j.asoc.2005.08.001]
[14]
Majhi R, Panda G, Sahoo G. Development and performance evaluation of FLANN based model for forecasting of stock markets. Expert Syst Appl 2009; 36(3): 6800-8.
[http://dx.doi.org/10.1016/j.eswa.2008.08.008]
[15]
Nayak SC, Misra BB, Behera HS. ACFLN: Artificial chemical functional link network for prediction of stock market index. Evol Syst 2018; 10: 567-92.
[16]
Nayak SC, Misra BB, Behera HS. Comparison of performance of different functions in functional link artificial neural network: A Case Study on Stock Index Forecasting Computational Intelligence in Data Mining-Volume 1. New Delhi: Springer 2015; pp. 479-87.
[17]
Patra JC, Thanh NC, Meher PK. Computationally efficient FLANN-based intelligent stock price prediction system. In: IEEE International Conference in Neural Networks, (IJCNN). 2009; pp. 2431–8.
[18]
Dehuri S, Roy R, Cho SB, Ghosh A. An improved swarm optimized functional link artificial neural network (ISO-FLANN) for classification. J Syst Softw 2012; 85(6): 1333-45.
[http://dx.doi.org/10.1016/j.jss.2012.01.025]
[19]
Mili F, Hamdi M. A hybrid evolutionary functional link artificial neural network for data mining and classification. 2012 6th International Conference on Sciences of Electronics, Technologies of Information and Telecommunications (SETIT). Sousse, Tunisia, 2012.
[20]
Nayak SC. Development and performance evaluation of adaptive hybrid higher order neural networks for exchange rate prediction. Int J Intell Syst Appl 2017; 9(8): 71-85.
[http://dx.doi.org/10.5815/ijisa.2017.08.08]
[21]
Das S, Sahoo B, Nayak SC. Predictive ability of FLANN on BSE index. Int J Pure Appl Math 2018; 118(24): 2018.
[22]
Nayak SC, Misra BB, Behera HS. An adaptive second order neural network with genetic algorithm based training (ASONN-GA) to forecast the closing prices of the stock market. Int J Appl Metaheuristic Comput 2015; 7(2): 39-57.
[23]
Nayak SC, Misra BB, Behera HS. Exploration and incorporation of virtual data position for efficient forecasting of financial time series. Int J Ind Syst Eng 2014; 26(1): 42.
[24]
Nayak SC, Misra BB, Behera HS. On developing and performance evaluation of adaptive second order neural network with GA based training (ASONN-GA) for financial time series prediction. Advances in Applied Metaheuristic Computing 2018.
[http://dx.doi.org/10.4018/978-1-5225-4151-6.ch010]
[25]
Rao RV, Savsani VJ, Vakharia DP. Teaching learning-based optimization: An optimization method for continuous non-linear large scale problems. Inf Sci 2012; 183: 1-15.
[26]
Rao RV, Savsani VJ, Balic J. Teaching learning based optimization algorithm for constrained and unconstrained real parameter optimization problems. Eng Optim 2012; 44: 1447-62.
[http://dx.doi.org/10.1080/0305215X.2011.652103]
[27]
Nayak SC, Misra BB, Behera HS. Impact of data normalization on stock index forecasting. Int J Comp Inf Syst Ind Manag Appl 2014; 6: 357-69.

Rights & Permissions Print Cite
© 2024 Bentham Science Publishers | Privacy Policy