用条件变异自动编码器利用高级信息预测股票成交量

Parley R Yang, Alexander Y Shestopaloff
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引用次数: 0

摘要

我们展示了如何利用条件变分编码器(CVAE)来改进短期和长期预测任务中每日股票成交量时间序列的预测,并利用输入变量的高级信息(如再平衡日期)。与传统的线性模型相比,CVAE 生成的非线性时间序列作为样本外预测,具有更好的准确性和更接近实际数据的相关性。这些生成预测也可用于情景生成,从而有助于解释。我们将进一步讨论非平稳时间序列中的相关性以及 CVAE 预测的其他潜在扩展。
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Stock Volume Forecasting with Advanced Information by Conditional Variational Auto-Encoder
We demonstrate the use of Conditional Variational Encoder (CVAE) to improve the forecasts of daily stock volume time series in both short and long term forecasting tasks, with the use of advanced information of input variables such as rebalancing dates. CVAE generates non-linear time series as out-of-sample forecasts, which have better accuracy and closer fit of correlation to the actual data, compared to traditional linear models. These generative forecasts can also be used for scenario generation, which aids interpretation. We further discuss correlations in non-stationary time series and other potential extensions from the CVAE forecasts.
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