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Journal ArticleDOI

Literature review: Machine learning techniques applied to financial market prediction

TLDR
Bibliographic survey 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, and it was concluded that the research theme is still relevant and that the use of data from developing markets is a research opportunity.
Abstract
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.

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The strategic use of artificial intelligence in the digital era: Systematic literature review and future research directions

TL;DR: A critical literature review related to the integration of AI to organizational strategy is provided, synthetizing the existing approaches and frameworks, highlighting the potential benefits, challenges and opportunities and presenting a discussion about future research directions.
Journal ArticleDOI

Theory building with big data-driven research – Moving away from the “What” towards the “Why”

TL;DR: Insight is provided on the methodological adaptations required in “big data studies” to be converted into “IS research” and contribute to theory building in information systems.
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Multi-DQN: An ensemble of Deep Q-learning agents for stock market forecasting

TL;DR: This paper exploits a Q-learning agent trained several times with the same training data and investigates its ensemble behavior in important real-world stock markets, indicating better performance than the conventional Buy-and-Hold strategy.
Journal ArticleDOI

A Comprehensive Survey on Deep Neural Networks for Stock Market: The Need, Challenges, and Future Directions

TL;DR: This article aims to review the significance and need of DNNs in the field of stock price and trend prediction, and discusses the applicability ofDNN variations to the temporal stock market data, and extends the survey to include hybrid, as well as metaheuristic, approaches withDNNs.
Journal ArticleDOI

Deep learning and time series-to-image encoding for financial forecasting

TL;DR: This paper exploits an ensemble of CNNs, trained over Gramian angular fields images, generated from time series related to the Standard & Poor ʼ s 500 index future; the aim is the prediction of the future trend of the U.S. market.
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