Literature review: Machine learning techniques applied to financial market prediction

•The search for models to predict the prices is still a highly researched topic.•The prices are financial time series that are difficult to predict.•The machine learning area applied to the prediction of financial market prices. The search for models to predict the prices of financial markets is sti...

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Veröffentlicht in:Expert systems with applications 2019-06, Vol.124, p.226-251
Hauptverfasser: Henrique, Bruno Miranda, Sobreiro, Vinicius Amorim, Kimura, Herbert
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Kimura, Herbert
description •The search for models to predict the prices is still a highly researched topic.•The prices are financial time series that are difficult to predict.•The machine learning area applied to the prediction of financial market prices. The search for models to predict the prices of financial markets is still a highly researched topic, despite major related challenges. The prices of financial assets are non-linear, dynamic, and chaotic; thus, they are financial time series that are difficult to predict. Among the latest techniques, machine learning models are some of the most researched, given their capabilities for recognizing complex patterns in various applications. With the high productivity in the machine learning area applied to the prediction of financial market prices, objective methods are required for a consistent analysis of the most relevant bibliography on the subject. This article proposes the use of bibliographic survey techniques that highlight the most important texts for an area of research. Specifically, these techniques are applied to the literature about machine learning for predicting financial market values, resulting in a bibliographical review of the most important studies about this topic. Fifty-seven texts were reviewed, and a classification was proposed for markets, assets, methods, and variables. Among the main results, of particular note is the greater number of studies that use data from the North American market. The most commonly used models for prediction involve support vector machines (SVMs) and neural networks. It was concluded that the research theme is still relevant and that the use of data from developing markets is a research opportunity.
doi_str_mv 10.1016/j.eswa.2019.01.012
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source Elsevier ScienceDirect Journals Complete - AutoHoldings
subjects Artificial intelligence
Bibliographies
Financial time series prediction
Literature review
Literature reviews
Machine learning
Main path analysis
Market value
Mathematical models
Neural networks
Pattern recognition
Predictions
Pricing
Securities markets
Support vector machines
Texts
title Literature review: Machine learning techniques applied to financial market prediction
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