Indonesian Journal of Electrical Engineering and Computer Science
Vol 10, No 2: May 2018

Technical Approach in Text Mining for Stock Market Prediction: A Systematic Review

Mohammad Rabiul Islam (Department of Computer Science, International Islamic Univesity Malaysia)
Imad Fakhri Al-Shaikhli (Department of Computer Science, International Islamic Univesity Malaysia)
Rizal Bin Mohd Nor (Department of Computer Science, International Islamic Univesity Malaysia)
Vijayakumar Varadarajan (School of Computing Science and Engineering, VIT University Chennai)



Article Info

Publish Date
01 May 2018

Abstract

Text mining methods and techniques have disclosed the mining task throughout information retrieval discipline in the field of soft computing techniques. To find the meaningful information from the vast amount of electronic textual data become a humongous task for trading decision. This empirical research of text mining role on financial text analysing in where stock predictive model need to improve based on rank search method. The review of this paper basically focused on text mining techniques, methods and principle component analysis that help reduce the dimensionality within the characteristics and optimal features. Moreover, most sophisticated soft-computing methods and techniques are reviewed in terms of analysis, comparison and evaluation for its performance based on electronic textual data. Due to research significance, this empirical research also highlights the limitation of different strategies and methods on exact aspects of theoretical framework for enhancing of performance.

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