In this paper we develop valid inference for high-dimensional time series. We extend the desparsified lasso to a time series setting under Near-Epoch Dependence (NED) assumptions allowing for non-Gaussian, serially correlated and heteroskedastic processes, where the number of regressors can possibly grow faster than the time dimension. We first derive an error bound under weak sparsity, which, coupled with the NED assumption, means this inequality can also be applied to the (inherently misspecified) nodewise regressions performed in the desparsified lasso. This allows us to establish the uniform asymptotic normality of the desparsified lasso under general conditions, including for inference on parameters of increasing dimensions. Additionally, we show consistency of a long-run variance estimator, thus providing a complete set of tools for performing inference in high-dimensional linear time series models. Finally, we perform a simulation exercise to demonstrate the small sample properties of the desparsified lasso in common time series settings.
翻译:在本文中,我们为高维时间序列开发了有效的推论。 我们将脱色的拉索扩展至近埃波赫依赖性(NED)假设下的时间序列设置,允许非加西安、序列相关和环心化过程,使递减者的数量可能比时间维度增长更快。 我们首先得出一个在微弱的聚度下捆绑的错误, 加上NED假设, 意味着这种不平等也可以适用于在脱色的拉索中进行的( 内在错误地描述的) 无偏向回归。 这使我们能够在一般条件下建立脱色的拉索的统一无损正常性, 包括对不断增长的维度参数的推断。 此外, 我们展示了长期差异估计器的一致性, 从而提供了一套完整的工具, 用于在高维线性时间序列模型中进行推断。 最后, 我们进行模拟练习, 以展示在共同的时间序列环境中的脱色拉索的微样本特性。