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Models applied in stock market prediction : a literature survey

Authors
  • Dassanayake, Wajira
  • Ardekani, Iman
  • Sharifzadeh, Hamid
Publication Date
Mar 07, 2019
Source
Unitec Research Bank
Keywords
Language
English
License
Unknown
External links

Abstract

Stock market prices are intrinsically dynamic, volatile, highly sensitive, nonparametric, nonlinear and chaotic in nature, as they are influenced by a myriad of interrelated factors. As such, stock market time series prediction is complex and challenging. Many researchers have been attempting to predict stock market price movements using various techniques and different methodological approaches. Recent literature confirms that hybrid models, integrating linear and non-linear functions or statistical and learning models, are better suited for training, prediction and generalisation performance of stock market prices. The purpose of this review is to investigate different techniques applied in stock market price prediction with special emphasis on hybrid models.

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