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Thank God That Regressing Y on X is Not the Same as Regressing X on Y: Direct and Indirect Residual Augmentations

机译:感谢上帝,在X上回归Y与在Y上回归X不同:直接和间接残差增强

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摘要

What does regressing Y on X versus regressing X on Y have to do with Markov chain Monte Carlo (MCMC)? It turns out that many strategies for speeding up data augmentation (DA) type algorithms can be understood as fostering independence or “de-correlation” between a regression function and the corresponding residual, thereby reducing or even eliminating dependence among MCMC iterates. There are two general classes of algorithms, those corresponding to regressing parameters on augmented data/auxiliary variables and those that operate the other way around. The interweaving strategy of Yu and Meng provides a general recipe to automatically take advantage of both, and it is the existence of two different types of residuals that makes the interweaving strategy seemingly magical in some cases and promising in general. The concept of residuals—which depends on actual data—also highlights the potential for substantial improvements when DA schemes are allowed to depend on the observed data. At the same time, there is an intriguing phase transition type of phenomenon regarding choosing (partially) residual augmentation schemes, reminding us once more of the prevailing issue of trade-off between robustness and efficiency. This article reports on these latest theoretical investigations (using a class of normal/independence models) and empirical findings (using a posterior sampling for a probit regression) in the search for effective residual augmentations—and ultimately more MCMC algorithms—that meet the 3-S criterion: simple, stable, and speedy. Supplementary materials for the article are available online.
机译:X上的Y回归Y上的X回归与马尔可夫链蒙特卡洛(MCMC)有什么关系?事实证明,许多用于加速数据增强(DA)类型算法的策略可以理解为促进回归函数与相应残差之间的独立性或“去相关性”,从而减少甚至消除MCMC迭代之间的依赖性。有两种通用的算法,一种对应于增量数据/辅助变量上的回归参数,另一种则相反。 Yu和Meng的交织策略提供了一种自动利用两者的通用方法,正是由于存在两种不同类型的残差,使得交织策略在某些情况下看似神奇,但总体上很有希望。残差的概念(取决于实际数据)还突出显示了当允许DA方案依赖于观察到的数据时,进行实质性改进的潜力。同时,在选择(部分)残差增强方案方面存在着一种有趣的相变现象,这再次使我们想起了鲁棒性和效率之间权衡取舍的普遍问题。本文报告了这些最新的理论研究(使用一类正常/独立模型)和经验发现(使用后验样本进行概率回归),以寻找有效的残差增强算法,最终更多的MCMC算法能够满足3个方面的要求。 S标准:简单,稳定和快速。该文章的补充材料可在线获得。

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