We consider the Bayesian analysis of models in which the unknown distribution of the outcomes is specified up to a set of conditional moment restrictions. The nonparametric exponentially tilted empirical likelihood function is constructed to satisfy a sequence of unconditional moments based on an increasing (in sample size) vector of approximating functions (such as tensor splines based on the splines of each conditioning variable). For any given sample size, results are robust to the number of expanded moments. We derive Bernstein-von Mises theorems for the behavior of the posterior distribution under both correct and incorrect specification of the conditional moments, subject to growth rate conditions (slower under misspecification) on the number of approximating functions. A large-sample theory for comparing different conditional moment models is also developed. The central result is that the marginal likelihood criterion selects the model that is less misspecified. We also introduce sparsity-based model search for high-dimensional conditioning variables, and provide efficient MCMC computations for high-dimensional parameters. Along with clarifying examples, the framework is illustrated with real-data applications to risk-factor determination in finance, and causal inference under conditional ignorability.
翻译:我们考虑贝叶西亚对各种模型的分析,这些模型对结果的未知分布有一定的有条件时刻限制。非参数性指数倾斜实验概率功能的构建是为了满足一个无条件时刻的顺序,其依据是大约同步函数的不断增长的(抽样大小)矢量(例如根据每个调节变量的样条纹而形成的微粒样条纹)。对于任何特定的样本大小,结果都与扩大的瞬时数相适应。我们从Bernstein-von Missorems理论中得出后端分布行为的正确和不正确的描述,条件是对条件时刻的正确和不正确的说明,取决于对相近功能数目的增长率条件(偏差的偏差)。还开发了用于比较不同条件时刻模型的大规模抽样理论。核心结果是边际可能性标准选择了不那么错误描述的模型。我们还对高维调调调变量进行基于空间的模型搜索,并为高维度参数提供高效的MCMC计算。除了澄清的例子外,框架还用真实数据应用来说明金融、因果和因果可忽略风险的不确定性。