利用循环神经网络(RNN)预测收益方向变化

IF 1.6 Q3 BUSINESS, FINANCE Journal of Emerging Technologies in Accounting Pub Date : 2021-06-29 DOI:10.2308/jeta-2021-001
Amos Baranes, Rimona Palas, A. Yosef
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引用次数: 0

摘要

这项研究有两个目的。第一,开发一个收益运动预测模型,以帮助投资者在他们的决策过程中,第二,探索循环神经网络(RNN)在财务报表分析中的潜力,并提出其应用的详细模型。rnn的两个主要优点是:它们不对数据进行假设,允许用户搜索最能描述财务数据与收益变化之间潜在关系的任何函数形式;它们动态地解释了时间序列行为,某一时期的收益并不独立于前一时期的收益。本文采用了新授权的XBRL数据,其优点是可以免费获取,易于获取,并且比传统数据库更及时。研究结果通过提供比神经网络和逻辑回归更高的预测精度来验证rnn的使用。
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Predicting Earnings Directional Movement Utilizing Recurrent Neural Networks (RNN)
The study has two objectives. The first, to develop an earnings movement prediction model to help investors in their decision process, the second, to explore the potential of Recurrent Neural Networks (RNN) in financial statement analysis and present a detailed model for its application. RNNs' two major advantages are: they do not make assumptions regarding the data and allow users to search whatever functional form best describes the underlying relationship between financial data and changes in earnings; they dynamically account for time – series behavior, earnings of a certain time period are not independent of earnings in previous time period s. The paper utilizes the newly mandated XBRL data, whose benefits are that it is freely available, easily accessible and is more timely than traditional data bases. The results of the study validate the use of RNNs by providing a higher accuracy prediction than neural networks and logistic regression.
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来源期刊
CiteScore
4.30
自引率
27.80%
发文量
14
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