Stationary points embedded in the derivatives are often critical for a model to be interpretable and may be considered as key features of interest in many applications. We propose a semiparametric Bayesian model to efficiently infer the locations of stationary points of a nonparametric function, while treating the function itself as a nuisance parameter. We use Gaussian processes as a flexible prior for the underlying function and impose derivative constraints to control the function's shape via conditioning. We develop an inferential strategy that intentionally restricts estimation to the case of at least one stationary point, bypassing possible mis-specifications in the number of stationary points and avoiding the varying dimension problem that often brings in computational complexity. We illustrate the proposed methods using simulations and then apply the method to the estimation of event-related potentials (ERP) derived from electroencephalography (EEG) signals. We show how the proposed method automatically identifies characteristic components and their latencies at the individual level, which avoids the excessive averaging across subjects which is routinely done in the field to obtain smooth curves. By applying this approach to EEG data collected from younger and older adults during a speech perception task, we are able to demonstrate how the time course of speech perception processes changes with age.
翻译:衍生物中嵌入的固定点往往对模型的解释至关重要,并可能被视为许多应用中感兴趣的关键特征。我们提议了半参数贝叶斯模型,以有效推断非参数功能固定点的位置,同时将功能本身作为骚扰参数处理。我们使用高森过程作为基础功能的灵活前程,并施加衍生因素限制,以通过调节控制函数的形状。我们制定推论策略,有意将估计限制在至少一个固定点的情况,绕过固定点数量中可能存在的误差,避免往往带来计算复杂性的不同层面问题。我们用模拟来说明拟议方法,然后将方法用于估算从电脑物理学信号中得出的与事件有关的潜力(ERP)。我们展示了拟议方法如何自动识别特征组成部分及其在个人层面的迟误,从而避免了在外地为获得平稳曲线而例行进行的各主题之间的超均分。我们通过将这一方法应用于从年轻和年长的语音感应变过程收集的EEG数据,从而能够展示在语音感应变过程期间如何向成年人展示时间感知过程。