2020
DOI: 10.1109/access.2020.3030226
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Stock Market Forecasting Using Deep Learning and Technical Analysis: A Systematic Review

Abstract: Stock market forecasting is one of the biggest challenges in the financial market since its time series has a complex, noisy, chaotic, dynamic, volatile, and non-parametric nature. However, due to computing development, an intelligent model can help investors and professional analysts reduce the risk of their investments. As Deep Learning models have been extensively studied in recent years, several studies have explored these techniques to predict stock prices using historical data and technical indicators. H… Show more

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Cited by 95 publications
(48 citation statements)
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“…Another key consideration is to assess predictive strength of Linear, Nonlinear, and Hybrid models to forecast stocks and indexes' equity performance through this literature review. The existing work in literature on stock price prediction may broadly be grouped under OLS or simple Regressing, Panel data Methods [26], [87], Timeseries Models (such as ARIMA) [72], [74], [88], Granger Causality [31], [43], [33]) and Machine Learning and Deep learning [68], [71], [76], [84] [69], [76]. Finally, Underlying the investment decision and risk decisions or selection of risk determinants are the psychological bias experienced by investors.…”
Section: Ideal Solution and Present Statusmentioning
confidence: 99%
“…Another key consideration is to assess predictive strength of Linear, Nonlinear, and Hybrid models to forecast stocks and indexes' equity performance through this literature review. The existing work in literature on stock price prediction may broadly be grouped under OLS or simple Regressing, Panel data Methods [26], [87], Timeseries Models (such as ARIMA) [72], [74], [88], Granger Causality [31], [43], [33]) and Machine Learning and Deep learning [68], [71], [76], [84] [69], [76]. Finally, Underlying the investment decision and risk decisions or selection of risk determinants are the psychological bias experienced by investors.…”
Section: Ideal Solution and Present Statusmentioning
confidence: 99%
“…In the financial area it is possible to forecast lots of scenarios using these data set, for instance, calculations of investment risk [Basak et al 2019], predictions of stocks [Hu et al 2021] [Thomaz et al 2021] and technical analysis [Li and Bastos 2020] of stocks. The use of neural networks as stock classifiers makes it possible to predict the behavior of one or more stocks and suggest the purchase or sale of a given asset at a given moment, indicating a high/moderate uptrend, stability, or moderate/ sharp drop.…”
Section: Applicationmentioning
confidence: 99%
“…Although there were numerous intelligent trading methods devised in the literature [20], none of them was based on concepts used by technical analysts for forecasting stock trading signals.…”
Section: Introductionmentioning
confidence: 99%
“…Time series modelling approaches like autoregressive integrated moving average (ARIMA) [20][21], and machine learning strategies like logistic regression (LR) [22][23], support vector machine (SVM) [24][25], random forest (RF) [26][27][28], decision trees [27][28], etc. are widely used by researchers to predict stock market.…”
Section: Introductionmentioning
confidence: 99%