短时间序列预测的变量选择方法比较

M. McGee, R. Yaffee
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引用次数: 2

摘要

从多变量时间序列数据进行预测是一项困难的任务,在序列数量(p)远大于每个序列长度(T)的情况下更是如此,这使得在获得模型之前需要进行降维。LASSO已成为一种广泛使用的从众多候选协变量中选择相关协变量的方法,它有许多变体和扩展,如分组LASSO、自适应LASSO、加权滞后自适应LASSO和融合LASSO。其中,只有加权滞后自适应LASSO和融合LASSO考虑了序列间的自然排序。为了检验LASSO变化对短时间序列选择相关协变量的能力,我们对少于50个观测值的序列进行了模拟。然后,我们将这些方法应用于切尔诺贝利核灾难后30年内自我报告的心理社会症状的显著变化的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Variable Selection Methods for Forecasting from Short Time Series
Forecasting from multivariate time series data is a difficult task, made more so in the situation where the number of series (p) is much larger than the length of each series (T), which makes dimension reduction desirable prior to obtaining a model. The LASSO has become a widely-used method to choose relevant covariates out of many candidates, and it has many variations and extensions, such as grouped LASSO, adaptive LASSO, weighted lag adaptive LASSO, and fused LASSO. Of these, only the weighted lag adaptive LASSO and the fused LASSO take into account natural ordering among series. To examine the ability of variations on the LASSO to choose relevant covariates for short time series we use simulations for series with fewer than 50 observations. We then apply the methods to a data set on significant changes in self-reported psycho-social symptoms in the 30 years after the Chornobyl nuclear catastrophe.
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