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Massive Parallelization of Serial Inference Algorithms for a Complex Generalized Linear Model

机译:复杂广义线性模型的串行推理算法的大规模并行化

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摘要

Following a series of high-profile drug safety disasters in recent years, many countries are redoubling their efforts to ensure the safety of licensed medical products. Large-scale observational databases such as claims databases or electronic health record systems are attracting particular attention in this regard, but present significant methodological and computational concerns. In this article we show how high-performance statistical computation, including graphics processing units, relatively inexpensive highly parallel computing devices, can enable complex methods in large databases. We focus on optimization and massive parallelization of cyclic coordinate descent approaches to fit a conditioned generalized linear model involving tens of millions of observations and thousands of predictors in a Bayesian context. We find orders-of-magnitude improvement in overall run-time. Coordinate descent approaches are ubiquitous in high-dimensional statistics and the algorithms we propose open up exciting new methodological possibilities with the potential to significantly improve drug safety.
机译:在近年来发生了一系列备受瞩目的药物安全灾难之后,许多国家正在加倍努力以确保获得许可的医疗产品的安全。在这方面,大规模的观察性数据库,例如索赔数据库或电子病历系统,正引起特别关注,但是却引起了重大的方法论和计算问题。在本文中,我们展示了高性能统计计算(包括图形处理单元,相对便宜的高度并行计算设备)如何能够在大型数据库中实现复杂的方法。我们关注于循环坐标下降方法的优化和大规模并行化,以适应在贝叶斯背景下涉及数千万个观测值和数千个预测变量的条件化广义线性模型。我们发现总体运行时间得到了数量级的改善。坐标下降方法在高维统计中无处不在,我们提出的算法开辟了令人兴奋的新方法论可能性,并有可能显着提高药物安全性。

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