基于ARIMA和ANN的股票市场价格预测CSE的一个案例研究

G.W.R.I. Wijesinghe, R. Rathnayaka
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引用次数: 6

摘要

股票市场预测或预测是一项具有挑战性的任务,预测即将到来的股票价值。由于股票市场受到多种因素的影响,股票价格具有非平稳性和高噪声性。传统上,时间序列的下一个滞后是通过简单指数平滑、ARIMA等多种技术有效预测的。特别是,ARIMA在预测下一个时间序列滞后的准确性和精度方面取得了成功。作为文献的一部分,很少有研究关注科伦坡证券交易所(CSE),以寻找新的预测方法来预测高波动性股票价格指数。在过去十年中,不同的统计方法和经济数据策略被广泛应用于确定市场价格变动和趋势以及CSE的交易量水平。本文探讨了新开发的用于时间序列数据投影的深度学习算法,如反向传播神经网络,是否以及如何优于传统算法。结果表明,像BPNN这样的深度学习算法优于像ARIMA模型这样的传统算法。相对于ARIMA和BPNN的MAE和MSE值,表明BPNN优于ARIMA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock Market Price Forecasting using ARIMA vs ANN; A Case study from CSE
Stock market prediction or forecasting is a challenging task to predict the upcoming stock values. Stock prices are nonstationary and highly noisy because stock markets are affected by a variety of factors. Traditionally, the next lag of time series is effectively forecast by a variety of techniques like Simple Exponential Smoothing, ARIMA. In particular, ARIMA has shown its success in accuracy and precision in predicting the next time-series lags. As part of the literature, very few studies have focused on Colombo Stock Exchange (CSE) to find new predictive approaches for the forecasting of high volatility stock price indexes. Different statistical approaches and economic data strategies have been widely applied to define market price movements and trends and the trade volume levels in CSE over the last ten years. This article explores whether and how the newly developed deep learning algorithms for the projection of time series data, such as the Back Propagation Neural Network, are greater than traditional algorithms. The results show that Deep learning algorithms like BPNN outperform traditionally based algorithms like the model ARIMA. The MAE and MSE values relative to ARIMA and BPNN, which suggests BPNN 's superiority to ARIMA.
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