Evaluation of Weight Decay Regularization Techniques for Stock Price Prediction using Gated Recurrent Unit Network

Arjun Singh Saud, S. Shakya
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Abstract

Stock price forecasting in the field of interest for many stock investors to earn more profit from stock trading. Nowadays, machine learning researchers are also involved in this research field so that fast, accurate and automatic stock price forecasting can be achieved. This research paper evaluated GRU network’s performance with weight decay reg-ularization techniques for predicting price of stocks listed NEPSE. Three weight decay regularization technique analyzed in this research work were (1) L1 regularization (2) L2 regularization and (3) L1_L2 regularization. In this research work, six randomly selected stocks from NEPSE were experimented. From the experimental results, we observed that L2 regularization could outperform L1 and L1_L2 reg-ularization techniques for all six stocks. The average MSE obtained with L2 regularization was 4.12% to 33.52% lower than the average MSE obtained with L1 regularization, and it was 10.92% to 37.1% lower than the average MSE obtained with L1_L2 regularization. Thus, we concluded that the L2 regularization is best choice among weight regularization for stock price prediction.
基于门控循环单元网络的股票价格预测的权值衰减正则化技术评价
股票价格预测是许多股票投资者感兴趣的领域,可以从股票交易中赚取更多的利润。如今,机器学习研究人员也开始涉足这一研究领域,从而实现快速、准确、自动的股票价格预测。本文利用权值衰减正则化技术评价了GRU网络预测NEPSE上市股票价格的性能。本研究分析了三种权值衰减正则化技术:(1)L1正则化(2)L2正则化和(3)L1_L2正则化。在本研究中,随机选择6只NEPSE股票进行实验。从实验结果中,我们观察到L2正则化对所有6只股票都优于L1和L1_L2正则化技术。L2正则化得到的平均MSE比L1正则化得到的平均MSE低4.12% ~ 33.52%,比L1_L2正则化得到的平均MSE低10.92% ~ 37.1%。因此,我们得出L2正则化是权重正则化中股票价格预测的最佳选择。
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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