Stock Price Prediction: An Incremental Learning Approach Model of Multiple Regression

Md. Tanvir Mahtab, A. G. M. Zaman, Montasir Rahman Mahin, Mohammad Nazim Mia, Md. Tanjirul Islam
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Abstract

The endeavour of predicting stock prices using different mathematical and technological methods and tools is not new. But the recent advancements and curiosity regarding big data and machine learning have added a new dimension to it. In this research study, we investigated the feasibility and performance of the multiple regression method in the prediction of stock prices. Here, multiple regression was used on the basis of the incremental machine learning setting. The study conducted an experiment to predict the closing price of stocks of six different organizations enlisted in the Dhaka Stock Exchange (DSE). Three years of historical stock market data (2017-2019) of these organizations have been used. Here, the Multiple Regression, Squared Loss Function, and Stochastic Gradient Descent (SGD) algorithms are used as a predictor, loss function, and optimizer respectively. The model incrementally learned from the data of several stock-related attributes and predicted the closing price of the next day. The performance of prediction was then analysed and assessed on the basis of the rolling Mean Absolute Error (MAE) metric. The rolling MAE scores found in the experiment are quite promising.
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股票价格预测:一个增量学习方法的多元回归模型
使用不同的数学和技术方法和工具预测股票价格的努力并不新鲜。但最近关于大数据和机器学习的进步和好奇心为它增添了一个新的维度。在本研究中,我们探讨了多元回归方法在股票价格预测中的可行性和性能。这里,在增量机器学习设置的基础上使用多元回归。该研究进行了一项实验,以预测达卡证券交易所(DSE)上市的六个不同组织的股票收盘价。本文使用了这些机构的三年历史股票市场数据(2017-2019)。在这里,多元回归、平方损失函数和随机梯度下降(SGD)算法分别被用作预测器、损失函数和优化器。该模型从几个股票相关属性的数据中增量学习,并预测第二天的收盘价。然后在滚动平均绝对误差(MAE)度量的基础上分析和评估预测的性能。实验中发现的滚动MAE分数相当有希望。
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