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运用方差缩减技术提高蒙特卡洛队列模拟的效率。

Increasing the efficiency of Monte Carlo cohort simulations with variance reduction techniques.

作者信息

Shechter Steven M, Schaefer Andrew J, Braithwaite R Scott, Roberts Mark S

机构信息

Department of Industrial Engineering, University of Pittsburgh, USA.

出版信息

Med Decis Making. 2006 Sep-Oct;26(5):550-3. doi: 10.1177/0272989X06290489.

Abstract

The authors discuss techniques for Monte Carlo (MC) cohort simulations that reduce the number of simulation replications required to achieve a given degree of precision for various output measures. Known as variance reduction techniques, they are often used in industrial engineering and operations research models, but they are seldom used in medical models. However, most MC cohort simulations are well suited to the implementation of these techniques. The authors discuss the cost of implementation versus the benefit of reduced replications.

摘要

作者讨论了蒙特卡洛(MC)队列模拟技术,这些技术可减少为实现各种输出指标的给定精度所需的模拟重复次数。这些技术被称为方差缩减技术,常用于工业工程和运筹学模型,但在医学模型中很少使用。然而,大多数MC队列模拟非常适合实施这些技术。作者讨论了实施成本与减少重复次数带来的益处。

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