Deep Learning Approaches for Predicting Intraday Price Movements: An Evaluation of RNN Variants on High-Frequency Stock Data

Mochamad Ridwan, Kusman Sadik, F. Afendi
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Abstract

This study discusses the comparison of four recurrent neural networks (RNN) models: Simple RNN, Gated Recurrent Unit (GRU), Long Short-Term Memory (LSTM), and Bidirectional RNN (BiRNN), in forecasting minute-level stock price time series data. The performance of these four models is evaluated using the Mean Absolute Percentage Error (MAPE) on a stock dataset from Bank Central Asia (BBCA.JK). The experimental results reveal that the GRU model exhibits the best performance with an average MAPE of 0.0255%, followed by the LSTM model with an average MAPE of 0.0377%. The BiRNN model also demonstrates good performance with an average MAPE of 0.0668%, while the Simple RNN has the highest average MAPE at 0.5118%. This suggests that more complex recurrent architectures like GRU and LSTM have better capabilities in capturing patterns in high-frequency time series data. This study can be expanded by exploring other models such as CNN, conducting tests on diverse datasets, and experimenting with a wider range of hyperparameter variations. Additional variables such as economic indicators, global market data, and social data can also offer a more comprehensive understanding of factors influencing stock prices.
预测日内价格变动的深度学习方法:高频股票数据的 RNN 变体评估
本研究讨论了四种递归神经网络(RNN)模型的比较:简单 RNN、门控递归单元 (GRU)、长短期记忆 (LSTM) 和双向 RNN (BiRNN) 这四种递归神经网络模型在预测分钟级股票价格时间序列数据方面的性能。在中亚银行(BBCA.JK)的股票数据集上,使用平均绝对百分比误差(MAPE)评估了这四种模型的性能。实验结果表明,GRU 模型表现最佳,平均 MAPE 为 0.0255%,其次是 LSTM 模型,平均 MAPE 为 0.0377%。BiRNN 模型也表现出色,平均 MAPE 为 0.0668%,而 Simple RNN 的平均 MAPE 最高,为 0.5118%。这表明,GRU 和 LSTM 等更复杂的递归架构在捕捉高频时间序列数据中的模式方面具有更强的能力。这项研究还可以通过探索其他模型(如 CNN)、在不同的数据集上进行测试以及尝试更广泛的超参数变化来进一步扩展。经济指标、全球市场数据和社会数据等其他变量也能让我们更全面地了解影响股票价格的因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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