Recent developments in statistical regression methodology shift away from pure mean regression towards distributional regression models. One important strand thereof is that of conditional transformation models (CTMs). CTMs infer the entire conditional distribution directly by applying a transformation function to the response conditionally on a set of covariates towards a simple log-concave reference distribution. Thereby, CTMs allow not only variance, kurtosis or skewness but the complete conditional distribution to depend on the explanatory variables. We propose a Bayesian notion of conditional transformation models (BCTMs) focusing on exactly observed continuous responses, but also incorporating extensions to randomly censored and discrete responses. Rather than relying on Bernstein polynomials that have been considered in likelihood-based CTMs, we implement a spline-based parametrization for monotonic effects that are supplemented with smoothness priors. Furthermore, we are able to benefit from the Bayesian paradigm via easily obtainable credible intervals and other quantities without relying on large sample approximations. A simulation study demonstrates the competitiveness of our approach against its likelihood-based counterpart but also Bayesian additive models of location, scale and shape and Bayesian quantile regression. Two applications illustrate the versatility of BCTMs in problems involving real world data, again including the comparison with various types of competitors.
翻译:统计回归方法的近期发展从纯平均回归转向分布回归模型。其中一个重要的部分是有条件转换模型(CTMs)。CTMs直接将整个有条件分布通过对反应应用一种转换功能直接推导出整个有条件分布,其方法是对基于概率的CTMs中考虑的一组共变数进行有条件的响应,向简单的日志引用分布。因此,CTMs不仅允许差异、质优或偏差,而且完全的有条件分布取决于解释变量。我们提出了一个Bayesian的有条件转换模型概念,侧重于精确观察到的连续反应,但也包括随机检查和分散反应的扩展。我们不是依赖Bernstein 多边营养模型,而是依赖在基于概率的CTMs中考虑的伯恩斯坦因斯坦多边补充功能,而是采用基于螺纹的双线参数,以单体效应为补充,之前的光滑度为补充。此外,我们可以通过容易获得的可靠间隔和其他数量获益于BTMs的其他模式,而不必依赖大样本的近似度。模拟研究表明,我们的方法相对于基于可能性的对应但同时也包括Bayesian 补充模型模型,在位置、比例和BATMs regregregreal 中再次展示了世界中的真实数据型的多重和Bestreal 。