Yip P
Department of Statistics, La Trobe University, Bundoora, Victoria, Australia.
Theor Popul Biol. 1989 Oct;36(2):202-13. doi: 10.1016/0040-5809(89)90030-0.
Consider the problem of making inference about the initial relative infection rate of a stochastic epidemic model. A relatively complete analysis of infectious disease data is possible when it is assumed that the latent and infectious periods are non-random. Here two related martingale-based techniques are used to derive estimates and associated standard errors for the initial relative infection rate. The first technique requires complete information on the epidemic, the second only the total number of people who were infected and the population size. Explicit expressions for the estimates are obtained. The estimates of the parameter and its associated standard error are easily computed and compare well with results of other methods in an application to smallpox data. Asymptotic efficiency differences between the two martingale techniques are considered.
考虑对随机流行病模型的初始相对感染率进行推断的问题。当假设潜伏期和传染期是非随机的时,对传染病数据进行相对完整的分析是可能的。这里使用两种基于鞅的相关技术来推导初始相对感染率的估计值和相关标准误差。第一种技术需要关于疫情的完整信息,第二种技术只需要感染人数和人口规模的总数。得到了估计值的显式表达式。参数估计值及其相关标准误差很容易计算,并且在应用于天花数据时与其他方法的结果比较良好。考虑了两种鞅技术之间的渐近效率差异。