Stock Price Prediction through STL Decomposition using Multivariate Two-way Long Short-term Memory

Authors

  • Junsuke Senoguchi Tokyo University of Technology, School of Computer Science, Department of Computer Science, Japan

DOI:

https://doi.org/10.32996/jcsts.2022.4.2.11

Keywords:

machine learning, multivariate bidirectional LSTM, STL decomposition, stock-price prediction

Abstract

With advancements in machine-learning techniques, stock-price movements can ostensibly be forecasted using time-series data. In this study, several different types of long short-term memory (LSTM) are used to predict the closing prices of Japanese stocks five days into the future. Also, in this study, four different features [i.e., simple moving average (SMA), linear weighted moving average (WMA), exponential WMA (EMA), and the Savitzky–Golay (SG) metric] are generated from daily stock-price data and split into two components (i.e., trend and seasonal) by applying seasonal–trend decomposition using Loess (STL) decomposition. The prediction results are evaluated in terms of return, root-mean-square error (RMSE), mean absolute error (MAE), and other relevant measures of accuracy and relevancy. As a result, the multivariate two-way LSTM model yielded the highest overall performance. With respect to the RMSE and MAE of the training data, the multivariate two-way LSTM was not superior to the other models. However, with respect to RMSE and MAE on the validation data, it was the best. Also, the multivariate two-way LSTM model yielded the highest overall performance in terms of the accuracy of the direction of stock prices.

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Published

2022-10-09

Issue

Section

Research Article

How to Cite

Senoguchi, J. (2022). Stock Price Prediction through STL Decomposition using Multivariate Two-way Long Short-term Memory. Journal of Computer Science and Technology Studies, 4(2), 90-96. https://doi.org/10.32996/jcsts.2022.4.2.11