EXTRA TREES METHOD FOR STOCK PRICE FORECASTING WITH ROLLING ORIGIN ACCURACY EVALUATION

D. A. Mahkya, K. Notodiputro, B. Sartono
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引用次数: 0

Abstract

Stock is an investment instrument that has risk in its management. One effort to minimize this risk is to model and make further forecasts of stock price movements. Time series data forecasting with autoregressive models is often found in several cases with the most popular approach being the ARIMA model. The tree-based method is one of the algorithms that can be used to forecast both in classification and regression. One ensemble approach to tree-based methods is Extra Trees. This study aims to forecast using the Extra Trees algorithm by evaluating forecasting accuracy with Rolling Forecast Origin on BRMS stock price data. Based on the results obtained, it is known that Extra Trees produces a fairly good accuracy for forecasting up to 6 days after training data with a MAPE of less than 0.1%.
具有滚动原点的股票价格预测精度评价的附加树方法
股票是一种管理中存在风险的投资工具。将这种风险降至最低的一项努力是对股价走势进行建模和进一步预测。使用自回归模型的时间序列数据预测通常在几种情况下发现,最流行的方法是ARIMA模型。基于树的方法是一种可以用于分类和回归预测的算法。基于树的方法的一种集成方法是Extra Trees。本研究旨在通过在BRMS股价数据上使用滚动预测原点来评估预测准确性,从而使用Extra Trees算法进行预测。基于所获得的结果,已知Extra Trees在训练数据后6天内产生了相当好的预测精度,MAPE小于0.1%。
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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