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Bayesian inverse regression for supervised dimension reduction with small datasets

机译:贝叶斯逆回归对具有小型数据集的监督尺寸减少

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We consider supervised dimension reduction problems, namely to identify a low dimensional projection of the predictors x which can retain the statistical relationship between x and the response variable y. We follow the idea of the sliced inverse regression (SIR) and the sliced average variance estimation (SAVE) type of methods, which is to use the statistical information of the conditional distribution pi(x vertical bar y) to identify the dimension reduction (DR) space. In particular we focus on the task of computing this conditional distribution without slicing the data. We propose a Bayesian framework to compute the conditional distribution where the likelihood function is constructed using the Gaussian process regression model. The conditional distribution pi(x vertical bar y) can then be computed directly via Monte Carlo sampling. We then can perform DR by considering certain moment functions (e.g. the first or the second moment) of the samples of the posterior distribution. With numerical examples, we demonstrate that the proposed method is especially effective for small data problems.
机译:我们考虑监督尺寸减少问题,即要识别可以保留X和响应变量y之间的统计关系的预测器x的低维投影。我们遵循切片逆回归(SIR)和切片平均方差估计(保存)类型的方法,这是使用条件分布PI(X垂直条Y)的统计信息来识别尺寸减少(DR ) 空间。特别是,我们专注于计算该条件分布而不切片数据的任务。我们提出了一个贝叶斯框架来计算使用高斯过程回归模型构建似然函数的条件分布。然后可以通过Monte Carlo采样直接计算条件分布PI(X垂直条Y)。然后,我们可以通过考虑后部分布样本的某些时刻函数(例如,第一个或第二时刻)来执行DR。利用数值示例,我们证明该方法对于小数据问题特别有效。

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