The sparsity-ranked lasso (SRL) has been developed for model selection and estimation in the presence of interactions and polynomials. The main tenet of the SRL is that an algorithm should be more skeptical of higher-order polynomials and interactions *a priori* compared to main effects, and hence the inclusion of these more complex terms should require a higher level of evidence. In time series, the same idea of ranked prior skepticism can be applied to the possibly seasonal autoregressive (AR) structure of the series during the model fitting process, becoming especially useful in settings with uncertain or multiple modes of seasonality. The SRL can naturally incorporate exogenous variables, with streamlined options for inference and/or feature selection. The fitting process is quick even for large series with a high-dimensional feature set. In this work, we discuss both the formulation of this procedure and the software we have developed for its implementation via the **srlTS** R package. We explore the performance of our SRL-based approach in a novel application involving the autoregressive modeling of hourly emergency room arrivals at the University of Iowa Hospitals and Clinics. We find that the SRL is considerably faster than its competitors, while producing more accurate predictions.
翻译:为了在互动和多季节性情况下进行模型选择和估计,已经开发了Sparsity-cranced lasso (SRL) 。 SRL的主要原则是,一种算法应比主要效果更怀疑高阶多式和互动 *a riti* 和主要效果,因此,列入这些更复杂的术语需要更高层次的证据。 在时间序列中,在模型安装过程中,可以对该系列可能具有季节性自动递减(AR)结构采用同样的先排级怀疑论,这在季节性或多种季节性模式的环境中变得特别有用。SRL可以自然地纳入外源变量,并简化推论和/或特性选择选项。即使对具有高维度特征的大型序列来说,也很快。在这项工作中,我们讨论了这一程序的制定以及我们通过**srltT** R 软件包为执行这一程序而开发的软件。 我们探索了我们基于SRL的方法在涉及自动递减法的新应用中的表现,其中涉及自动递增型模型和/或特性选择性特征选择。我们大学在更快速的医院中找到精确的模型。