In projection pursuit regression (PPR), an unknown response function is approximated by the sum of M "ridge functions," which are flexible functions of one-dimensional projections of a multivariate input space. Traditionally, optimization routines are used to estimate the projection directions and ridge functions via a sequential algorithm, and M is typically chosen via cross-validation. We introduce the first Bayesian version of PPR, which has the benefit of accurate uncertainty quantification. To learn the projection directions and ridge functions, we apply novel adaptations of methods used for the single ridge function case (M=1), called the Single Index Model, for which Bayesian implementations do exist; then use reversible jump MCMC to learn the number of ridge functions M. We evaluate the predictive ability of our model in 20 simulation scenarios and for 23 real datasets, in a bake-off against an array of state-of-the-art regression methods. Its effective performance indicates that Bayesian Projection Pursuit Regression is a valuable addition to the existing regression toolbox.
翻译:在投影回归(PPR)中,一个未知的响应功能被M“脊函数”的总和所近似,M“脊函数”是多变量输入空间单维预测的灵活功能。传统上,使用优化的例行程序来通过顺序算法估计投影方向和脊函数,M通常是通过交叉校验选择的。我们引入了第一个贝叶斯式的PPR,它具有准确的不确定性量化的好处。为了学习投影方向和脊函数,我们应用了对单一脊函数案例(M=1)所用方法的新调整,称为单一索引模型(M=1),贝耶西亚确实存在这种模型;然后使用可逆跳式的MCMC来学习脊函数M的数量。我们用20个模拟假想和23个真实数据集来评估模型的预测能力,这是针对一系列最先进的回归方法的。其有效表现表明,巴伊西亚投影反回归是现有回归工具箱的一个宝贵补充。