Laplacian-P-splines (LPS) associate the P-splines smoother and the Laplace approximation in a unifying framework for fast and flexible inference under the Bayesian paradigm. Gaussian Markov field priors imposed on penalized latent variables and the Bernstein-von Mises theorem typically ensure a razor-sharp accuracy of the Laplace approximation to the posterior distribution of these variables. This accuracy can be seriously compromised for some unpenalized parameters, especially when the information synthesized by the prior and the likelihood is sparse. We propose a refined version of the LPS methodology by splitting the latent space in two subsets. The first set involves latent variables for which the joint posterior distribution is approached from a non-Gaussian perspective with an approximation scheme that is particularly well tailored to capture asymmetric patterns, while the posterior distribution for parameters in the complementary latent set undergoes a traditional treatment with Laplace approximations. As such, the dichotomization of the latent space provides the necessary structure for a separate treatment of model parameters, yielding improved estimation accuracy as compared to a setting where posterior quantities are uniformly handled with Laplace. In addition, the proposed enriched version of LPS remains entirely sampling-free, so that it operates at a computing speed that is far from reach to any existing Markov chain Monte Carlo approach. The methodology is illustrated on the additive proportional odds model with an application on ordinal survey data.
翻译:P-splines Slipeer 和 Laplace 近似值(LPS) 将P-splines Slipeer 和 Laplace 相联 P-spline (LPS) 相联 P-spline 平滑度和 Laplace 近似值(LPS), 在 Baysian 范式下的快速和灵活推算统一框架 。 Gaussian Markov 字段前端对受惩罚的潜在变量和 Bernstein- von Mises 理论通常能确保 Laplace 近似值与这些变量的后端分布具有剃刀尖的精确度。 这种精确度对于一些未加分数的参数来说可能受到严重损害, 特别是当由先前和可能性所合成的信息是少见的时。 我们提议将LPPS 方法的精度方法的精细化化版, 将潜暗度分为两个子组, 将潜伏空间 方法的精细化版式处理模型参数,, 使联合的远端点分布分布在非加焦值分布, 从非焦值分布, 速度到离层 。