We introduce OFTER, a time series forecasting pipeline tailored for mid-sized multivariate time series. OFTER utilizes the non-parametric models of k-nearest neighbors and Generalized Regression Neural Networks, integrated with a dimensionality reduction component. To circumvent the curse of dimensionality, we employ a weighted norm based on a modified version of the maximal correlation coefficient. The pipeline we introduce is specifically designed for online tasks, has an interpretable output, and is able to outperform several state-of-the art baselines. The computational efficacy of the algorithm, its online nature, and its ability to operate in low signal-to-noise regimes, render OFTER an ideal approach for financial multivariate time series problems, such as daily equity forecasting. Our work demonstrates that while deep learning models hold significant promise for time series forecasting, traditional methods carefully integrating mainstream tools remain very competitive alternatives with the added benefits of scalability and interpretability.
翻译:我们介绍了OFER,一种针对中型多元时间序列的时间序列预测管道。OFTER利用k最近邻和广义回归神经网络的非参数模型,配合降维组件。为了避免维度的诅咒,我们采用基于修正的最大相关系数的加权范数。我们介绍的管道专门为在线任务设计,具有可解释的输出,并能够胜过几种最先进的基线。算法的计算效率、在线性质以及在低信噪比环境中运行的能力使OFTER成为金融多元时间序列问题的理想方法,如每日股权预测。我们的工作证明了,虽然深度学习模型在时间序列预测方面具有重要的前景,但仔细整合主流工具的传统方法仍然是竞争力极强,具有可扩展性和可解释性的选择。