Research on time-series financial data prediction and analysis based on deep recurrent neural network

Feng Yuan
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Abstract

Time series data is widely available in a variety of industries. By forecasting time series, decision-makers can better grasp future trends and make more effective decisions. Financial time series data exhibit non-stationarity and high volatility. High-frequency fluctuations in financial products such as exchange rates, bonds and equities may reflect external shocks and risks in global financial markets, which are potentially dangerous and may threaten national economic security or even trigger financial crises. For financial time series data, a deep recurrent neural network first progressively processes each data point in the time series through its recurrent unit. Each recurring unit can adjust its own weights to better predict or analyze future values. Over time, these recurrent units continuously update their internal state, resulting in a comprehensive understanding of the characteristics of the entire data sequence. In addition, we add a gating mechanism to further improve the network's ability to control the flow of information, so that the model is more effective when retaining long-term dependencies, so as to improve the accuracy of prediction and the stability of the model. Experimental results show that our recurrent neural network model shows higher prediction accuracy and stability than other baseline models on financial time series datasets.
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基于深度递归神经网络的时间序列金融数据预测与分析研究
时间序列数据广泛存在于各行各业。通过预测时间序列,决策者可以更好地把握未来趋势,做出更有效的决策。金融时间序列数据表现出非平稳性和高波动性。汇率、债券和股票等金融产品的高频波动可能反映全球金融市场的外部冲击和风险,具有潜在危险,可能威胁国家经济安全,甚至引发金融危机。对于金融时间序列数据,深度递归神经网络首先通过其递归单元逐步处理时间序列中的每个数据点。每个递归单元都可以调整自己的权重,以更好地预测或分析未来值。随着时间的推移,这些递归单元会不断更新其内部状态,从而全面了解整个数据序列的特征。此外,我们还增加了门控机制,进一步提高网络控制信息流的能力,使模型在保留长期依赖关系时更加有效,从而提高预测的准确性和模型的稳定性。实验结果表明,在金融时间序列数据集上,我们的递归神经网络模型比其他基线模型显示出更高的预测精度和稳定性。
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