论文标题
多元时间序列预测的长期趋势和短期波动框架的平行提取
Parallel Extraction of Long-term Trends and Short-term Fluctuation Framework for Multivariate Time Series Forecasting
论文作者
论文摘要
多元时间序列预测广泛用于各个领域。合理的预测结果可以帮助人们计划和决策,产生福利并避免风险。通常,时间序列有两个特征,即长期趋势和短期波动。例如,股价将与市场具有长期的上升趋势,但短期内可能会下降。这两个特征通常相对彼此独立。但是,现有的预测方法通常不会区分它们,从而降低了预测模型的准确性。在本文中,提出了可以平行捕获时间序列的长期趋势和短期波动的MTS预测框架。该方法使用原始时间序列及其第一个差异来表征长期趋势和短期波动。构建了三个预测子网络,以预测长期趋势,短期波动和要预测的最终值。在总体优化目标中,多任务学习的想法用于参考,即使长期趋势和短期波动的预测结果尽可能接近实际值,同时需要近似要预测的值。这样,提出的方法使用了更多的监督信息,并可以更准确地捕获时间序列的变化趋势,从而提高预测性能。
Multivariate time series forecasting is widely used in various fields. Reasonable prediction results can assist people in planning and decision-making, generate benefits and avoid risks. Normally, there are two characteristics of time series, that is, long-term trend and short-term fluctuation. For example, stock prices will have a long-term upward trend with the market, but there may be a small decline in the short term. These two characteristics are often relatively independent of each other. However, the existing prediction methods often do not distinguish between them, which reduces the accuracy of the prediction model. In this paper, a MTS forecasting framework that can capture the long-term trends and short-term fluctuations of time series in parallel is proposed. This method uses the original time series and its first difference to characterize long-term trends and short-term fluctuations. Three prediction sub-networks are constructed to predict long-term trends, short-term fluctuations and the final value to be predicted. In the overall optimization goal, the idea of multi-task learning is used for reference, which is to make the prediction results of long-term trends and short-term fluctuations as close to the real values as possible while requiring to approximate the values to be predicted. In this way, the proposed method uses more supervision information and can more accurately capture the changing trend of the time series, thereby improving the forecasting performance.