具有关注机制的印度股市多变量LSTM

Ashy Sebastian, Dr. Veerta Tantia
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引用次数: 0

摘要

注意机制的出现已经超越了许多基准,并使自然语言处理领域取得了广泛的进展。然而,在时间序列的背景下,它们没有得到充分的利用。因此,本文旨在通过提出一种混合的深度学习模型来解决这一问题,该模型集成了注意力机制和多变量长短期记忆(LSTM),用于印度股市的财务预测。与使用MAE和RMSE评估的基线和最先进的模型相比,我们的模型产生了优越的结果。此外,我们采用了Diebold-Mariano倡导的一种现代评价标准,即Diebold-Mariano检验(DM检验),作为基于统计假设检验的评价新标准。本研究采用DM检验来区分具有注意的LSTM与其他模型在预测精度上的显著差异。从结果和dm检验中可以看出,模型的预测性能之间的差异是显著的,注意机制可以使模型优先考虑和集中在数据中最重要的特征和模式上,同时避免过拟合和噪声,从而提高预测股价的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-variate LSTM with attention mechanism for the Indian stock market
The advent of attention mechanism has surpassed numerous benchmarks and enabled widespread progress in the realm of natural language processing (NLP). Nevertheless, they have not been adequately leveraged in a time-series context. Accordingly, this paper aims to address this issue by proposing a hybrid, deep-learning model that integrates attention mechanisms and multi-variate long short-term memory (LSTM) for financial forecasting in the Indian stock market. Our model yields superior results as compared to baseline and state-of-the-art models evaluated using MAE and RMSE. Moreover, we employed a modern evaluation criterion based on the methodology advocated by Diebold–Mariano, known as the Diebold–Mariano test (DM test), as a new criterion for evaluation based on statistical hypothesis tests. DM test has been applied in this study to distinguish the significant differences in forecasting accuracy between LSTM with attention and other models. From the results and according to DM-test it is observed that the differences between the forecasting performances of models are significant and that attention mechanism could enhance the accuracy in predicting stock prices by allowing the model to prioritize and concentrate on the most important features and patterns in the data while avoiding overfitting and noise.
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