TECHNIQUES FOR TIME SERIES PREDICTION: - A REVIEW

Authors

  • D. K. Sahoo, A.Patra, S.N.Mishra, M. R Senapati

Keywords:

Knowledge Management, Knowledge Creation, Organizational Performance, Human Capital, Bank Personnel

Abstract

This paper shows a recent literature survey on stock market prediction with the help of machine learning techniques. Neural network based models identified as the technique which is used by most of the researcher working on currency exchange rate prediction. Neural networks like artificial neural network(ANN) ,functional link artificial neural network (FLANN)radial basis function network(RBFN), wavelets neural network (WNN) ,Psi Sigma neural networks etc are ensemble with many other learning techniques such as least mean square(LMS) ,genetic algorithm(GA), particle swarm optimization (PSO)etc to improve the accuracy and the efficiency. Given currency exchange market model uncertainty, soft computing techniques are viable candidates to capture stock market nonlinear relations returning significant forecasting results.

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Published

2015-03-30

How to Cite

D. K. Sahoo, A.Patra, S.N.Mishra, M. R Senapati. (2015). TECHNIQUES FOR TIME SERIES PREDICTION: - A REVIEW. International Journal of Research Science and Management, 2(3), 6–13. Retrieved from http://ijrsm.com/index.php/journal-ijrsm/article/view/603

Issue

Section

Articles