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Theory And Applications Of A New Methodology For The Random Sequential Probability Ratio Test

机译:随机顺序概率比检验的新方法论的理论与应用

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Wald's [A. Wald, Sequential Analysis, Wiley, New York, 1947] sequential probability ratio test (SPRT) and group sequential probability ratio test (GSPRT) remain relevant in addressing a wide range of practical problems. The area of clinical trials owes a great debt to the theory and methodologies of SPRT and GSPRT. In recent years, there has been a surge of practical applications of these methodologies in many areas including low frequency sonar detection, tracking of signals, early detection of abrupt changes in signals, computer simulations, agricultural sciences, pest management, educational testing, economics, and finance. But, obviously, there are circumstances where sampling one observation at a time may not be practical. In contexts of monitoring "inventory" or "queues", observations may appear sequentially but in groups where the group sizes may be ideally treated as random variables themselves. For example, one may sequentially record the number of stopped cars (M_i) and the number of cars (∑_(j=1)~(M_i)) without "working brake lights" when a traffic signal changes from green to red, i = 1,2.....This can be easily accomplished since every "working brake light" must glow bright red when a driver applies brakes. In this example, one notes that (i) it may be reasonable to model M_i's as random, but (ii) it would appear impossible to record data sequentially on the status of brake lights (that is, X_(ij) = 0 or 1) individually for car #1, and then for car #2, and so on when a group of cars rush to stop at an intersection! In order to address these kinds of situations, we start with an analog of the concept of a best "fixed-sample-size" test based on data {M_i, X_i.....X_iM_i, i= 1.....k}. Then, a random sequential probability ratio test (RSPRT) is developed for deciding between a simple null hypothesis and a simple alternative hypothesis with preassigned Type I and II errors α, β. The RSPRT and the best "fixed-sample-size" test with k≡ k_(min) associated with the same errors α ,β. are compared. Illustrations of RSPRT include a one-parameter exponential family followed by substantive computer simulations that lead to a broad set of guidelines. Two real applications and data analysis are highlighted.
机译:沃尔德[A. Wald,Sequential Analysis,Wiley,纽约,1947年]顺序概率比检验(SPRT)和小组顺序概率比检验(GSPRT)在解决各种实际问题方面仍然很重要。临床试验领域应归功于SPRT和GSPRT的理论和方法论。近年来,这些方法在许多领域的实际应用激增,包括低频声纳检测,信号跟踪,信号突变突变的早期检测,计算机模拟,农业科学,病虫害管理,教育测试,经济学,和金融。但是,显然,在某些情况下,一次采样一个观察值可能不切实际。在监视“清单”或“队列”的情况下,观察结果可能会顺序出现,但在分组中,分组大小可以理想地视为随机变量本身。例如,当交通信号从绿色变为红色时,可以依次记录停下的汽车数量(M_i)和没有“工作刹车灯”的汽车数量(∑_(j = 1)〜(M_i))。 = 1,2 .....这很容易实现,因为当驾驶员踩刹车时,每个“工作刹车灯”都必须发出亮红色。在此示例中,有人指出(i)将M_i建模为随机模型是合理的,但是(ii)似乎无法按顺序记录刹车灯的状态数据(即X_(ij)= 0或1) )分别针对#1车,然后针对#2车,依此类推,以此类推。为了解决这类情况,我们从基于数据{M_i,X_i ..... X_iM_i,i = 1 .....的最佳“固定样本大小”测试的概念的模拟开始。 k}。然后,开发了一种随机顺序概率比检验(RSPRT),用于在简单的原假设和具有预分配的I型和II型误差α,β的简单替代假设之间进行决策。 RSPRT和最佳k_k_(min)的“固定样本大小”测试与相同的误差α,β相关。比较。 RSPRT的插图包括一个单参数指数族,后面是大量的计算机模拟,得出了一系列广泛的指南。突出显示了两个实际应用程序和数据分析。

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