Abstract

Predictions of stock and foreign exchange (Forex) have always been a hot and profitable area of study. Deep learning applications have been proven to yield better accuracy and return in the field of financial prediction and forecasting. In this survey, we selected papers from the Digital Bibliography & Library Project (DBLP) database for comparison and analysis. We classified papers according to different deep learning methods, which included Convolutional neural network (CNN); Long Short-Term Memory (LSTM); Deep neural network (DNN); Recurrent Neural Network (RNN); Reinforcement Learning; and other deep learning methods such as Hybrid Attention Networks (HAN), self-paced learning mechanism (NLP), and Wavenet. Furthermore, this paper reviews the dataset, variable, model, and results of each article. The survey used presents the results through the most used performance metrics: Root Mean Square Error (RMSE), Mean Absolute Percentage Error (MAPE), Mean Absolute Error (MAE), Mean Square Error (MSE), accuracy, Sharpe ratio, and return rate. We identified that recent models combining LSTM with other methods, for example, DNN, are widely researched. Reinforcement learning and other deep learning methods yielded great returns and performances. We conclude that, in recent years, the trend of using deep-learning-based methods for financial modeling is rising exponentially.

Highlights

  • The share market is a snapshot of future growth expectations of companies as well as the economy

  • The results showed that the proposed model performed much better than the Long Short-Term Memory (LSTM) model and the Convolutional neural network (CNN) model [27]

  • The results showed that stock prediction accuracy based on Mean absolute error (MAE), Mean absolute percentage error (MAPE), Root Mean Square Error (RMSE), and Mean square error (MSE) obtained by the dynamic

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Summary

Introduction

The share market is a snapshot of future growth expectations of companies as well as the economy. The advancement of technology allows the public to access a larger quantity of information in a timelier manner. This means that stock analysis has become more and more difficult as a considerable amount of data has to be processed in a relatively short time. Foreign exchange (Forex) is one of the largest financial markets in the world. The exchange rate is always under the influence of many factors, such as countries’ economies, politics, society, international situation, etc., so the complexity of the matter has made Forex prediction and forecasting a challenging research topic [2]. Forex forecasting tasks apply many different deep learning models as the computer and artificial intelligence technology mature

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