基于门控循环单元(GRU)的集成模型预测股票市场指数:LSTM-GRU

Nrusingha Tripathy, Surabi Parida, S. Nayak
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引用次数: 0

摘要

“时间序列分析”是一种特殊的方法,用于查看在很长一段时间内收集的一组数据点。时间序列分析器不是随机或不经常地从预定时间长度的数据点收集信息,而是在计划的时间内收集信息。但这种研究需要的不仅仅是随着时间的推移积累数据。可以对时间序列中的数据进行分析,以说明变量如何随时间变化,这使得它们与其他类型的数据不同。换句话说,时间是一个关键因素,因为它展示了数据在信息和结果的时间段内是如何变化的。它提供了预先确定的数据依赖关系体系结构以及额外的数据源。时间序列预测是深度学习的一个重要领域,因为许多预测问题都有时间成分。时间序列是按时间顺序进行的观察结果的集合。在本研究中,我们检验了不同的机器学习、深度学习和集成模型算法来预测耐克股票价格。我们将使用耐克2006年1月至2018年1月的股价数据进行预测。结果表明,混合LSTM-GRU模型在性能方面优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Stock Market Indices Using Gated Recurrent Unit (GRU) Based Ensemble Models: LSTM-GRU
A "time sequence analysis" is a particular method for looking at a group of data points gathered over a long period of time. Instead of merely randomly or infrequently, time series analyzers gather information from data points over a predetermined length of time at scheduled times. But this kind of research requires more than just accumulating data over time. Data in time series may be analyzed to illustrate how variables change over time, which makes them different from other types of data. To put it another way, time is a crucial element since it demonstrates how the data changes over the period of the information and the outcomes. It offers a predetermined architecture of data dependencies as well as an extra data source. Time Series forecasting is a crucial field in deep learning because many forecasting issues have a temporal component. A time series is a collection of observations that are made sequentially across time. In this study, we examine distinct machine learning, deep learning and ensemble model algorithms to predict Nike stock price. We are going to use the Nike stock price data from January 2006 to January 2018 and make predictions accordingly. The outcome demonstrates that the hybrid LSTM-GRU model outperformed the other models in terms of performance.
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