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Robust distributed lag models using data adaptive shrinkage

机译:使用数据自适应缩收的强大分布式滞后模型

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Distributed lag models (DLMs) have been widely used in environmental epidemiology to quantify the lagged effects of air pollution on an outcome of interest such as mortality or cardiovascular events. Generally speaking, DLMs can be applied to time-series data where the current measure of an independent variable and its lagged measures collectively affect the current measure of a dependent variable. The corresponding distributed lag (DL) function represents the relationship between the lags and the coefficients of the lagged exposure variables. Common choices include polynomials and splines. On one hand, such a constrained DLM specifies the coefficients as a function of lags and reduces the number of parameters to be estimated; hence, higher efficiency can be achieved. On the other hand, under violation of the assumption about the DL function, effect estimates can be severely biased. In this article, we propose a general framework for shrinking coefficient estimates from an unconstrained DLM, that are unbiased but potentially inefficient, toward the coefficient estimates from a constrained DLM to achieve a bias-variance trade-off. The amount of shrinkage can be determined in various ways, and we explore several such methods: empirical Bayes-type shrinkage, a hierarchical Bayes approach, and generalized ridge regression. We also consider a two-stage shrinkage approach that enforces the effect estimates to approach zero as lags increase. We contrast the various methods via an extensive simulation study and show that the shrinkage methods have better average performance across different scenarios in terms of mean squared error (MSE).
机译:分布式滞后模型(DLMS)已广泛用于环境流行病学,以量化空气污染对死亡率或心血管事件等结果的滞后影响。一般而言,DLM可以应用于时间序列数据,其中独立变量的当前测量和其滞后措施共同影响了从属变量的当前测量。相应的分布式滞后(DL)函数表示滞后曝光变量的滞后和系数之间的关系。共同选择包括多项式和花键。一方面,这种受约束的DLM指定系数作为滞后的函数,并减少要估计的参数的数量;因此,可以实现更高的效率。另一方面,在违反关于DL函数的假设下,效果估计可能会严重偏见。在本文中,我们提出了一个总框架,用于从受约束的DLM中缩小系数估计,这是不偏见但潜在低效的,朝着受约束的DLM的系数估计实现偏差差异。收缩量可以以各种方式确定,我们探讨了几种这样的方法:经验贝叶斯型收缩,分层贝叶斯方法和广义脊回归。我们还考虑了一个两级收缩方法,使效果估计变为零作为滞后增加。我们通过广泛的仿真研究对比各种方法,并表明收缩方法在平均平方误差(MSE)方面具有更好的平均性能。

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