Screening traditionally refers to the problem of detecting active inputs in the computer model. In this paper, we develop methodology that applies to screening, but the main focus is on detecting active inputs not in the computer model itself but rather on the discrepancy function that is introduced to account for model inadequacy when linking the computer model with field observations. We contend this is an important problem as it informs the modeler which are the inputs that are potentially being mishandled in the model, but also along which directions it may be less recommendable to use the model for prediction. The methodology is Bayesian and is inspired by the continuous spike and slab prior popularized by the literature on Bayesian variable selection. In our approach, and in contrast with previous proposals, a single MCMC sample from the full model allows us to compute the posterior probabilities of all the competing models, resulting in a methodology that is computationally very fast. The approach hinges on the ability to obtain posterior inclusion probabilities of the inputs, which are very intuitive and easy to interpret quantities, as the basis for selecting active inputs. For that reason, we name the methodology PIPS -- posterior inclusion probability screening.
翻译:在本文中,我们开发了适用于筛选的方法,但主要重点是检测非计算机模型本身的积极投入,而是在将计算机模型与实地观测联系起来时,为计算模型不足而引入的差异功能。我们认为这是一个重要的问题,因为它告诉了建模者,这些输入有可能在模型中被错误地处理,但也沿着哪些方向,它可能不太建议使用模型进行预测。这个方法是巴伊西亚的,受到巴伊西亚变量选择文献先前普及的连续加注和板块的启发。在我们的方法中,与以前的建议不同,一个完整的模型的单一MCMC样本使我们能够计算所有竞争模型的远概率,从而导致一种计算非常快的方法。这个方法取决于能否获得投入的后加法的概率,这些参数非常直观,易于解释数量,作为选择积极输入的基础。为此,我们指定了方法PIPS-imposior概率筛选。