This work considers stationary vector count time series models defined via deterministic functions of a latent stationary vector Gaussian series. The construction is very general and ensures a pre-specified marginal distribution for the counts in each dimension, depending on unknown parameters that can be marginally estimated. The vector Gaussian series injects flexibility into the model's temporal and cross-dimensional dependencies, perhaps through a parametric model akin to a vector autoregression. We show that the latent Gaussian model can be estimated by relating the covariances of the counts and the latent Gaussian series. In a possibly high-dimensional setting, concentration bounds are established for the differences between the estimated and true latent Gaussian autocovariances, in terms of those for the observed count series and the estimated marginal parameters. The results are applied to the case where the latent Gaussian series is a vector autoregression, and its parameters are estimated sparsely through a LASSO-type procedure.
翻译:这项工作考虑了通过潜在固定矢量高斯序列的确定性函数定义的固定矢量计时间序列模型。 构造非常笼统, 并确保每个维度的计算都有一个预先指定的边际分布, 取决于可以略微估计的未知参数。 矢量高斯序列给模型的时间和跨维依赖性注入了灵活性, 也许通过类似于矢量自动回归的参数模型。 我们显示, 潜值高斯模型可以通过将数数的变量和潜值序列联系起来来估计。 在可能的高维设置中, 对估计和真实的潜值高斯亚自动变量之间的差别, 以所观察到的数序列和估计的边际参数的数值为界限。 其结果应用到潜值高斯系列是矢量自动回归的案例中, 其参数是通过LASO型程序稀少估计的。