We study the existence, strong consistency and asymptotic normality of estimators obtained from estimating functions, that are p-dimensional martingale transforms. The problem is motivated by the analysis of evolutionary clustered data, with distributions belonging to the exponential family, and which may also vary in terms of other component series. Within a quasi-likelihood approach, we construct estimating equations, which accommodate different forms of dependency among the components of the response vector and establish multivariate extensions of results on linear and generalized linear models, with stochastic covariates. Furthermore, we characterize estimating functions which are asymptotically optimal, in that they lead to confidence regions for the regression parameters which are of minimum size, asymptotically. Results from a simulation study and an application to a real dataset are included.
翻译:我们研究了从估计功能获得的测算器的存在、强烈一致性和无症状的正常性,这些测算器是二维马丁格变异。问题源于对进化集成数据的分析,其分布属于指数式家庭,而且从其他成份序列来看也可能有所不同。在准相似的方法中,我们构建了估计方程式,其中考虑到反应矢量各组成部分之间不同形式的依赖性,并在直线和通用线性线性模型上建立多变的结果延伸,并配有随机共变的共变模型。此外,我们描述的测算功能是非现成最佳的,因为它们导致对最小尺寸的回归参数产生信心区域,无现成。模拟研究的结果和对真实数据集的应用也包含在内。