论文标题
COX点过程回归
Cox Point Process Regression
论文作者
论文摘要
时间流程中有各种各样的应用程序,其中包括保险中的索赔到达过程或运营研究中的队列分析。由于技术的进步,这种点过程的样本越来越多。感兴趣的关键对象是局部强度函数。它具有直接的解释,可以理解和探索点过程数据。我们考虑了点过程的功能方法,其中一个对点过程的重复实现样本。这种情况固有地与COX过程相连,其中将复制的强度函数建模为随机函数。在这里,我们研究了一个情况,即记录了该过程的每次复制的协变量,例如自行车租赁的每日温度。对于用矢量协变量作为预测因子的响应,我们提出了一种本质上非参数的强度函数的回归方法。虽然无法在固定域上观察到的点过程的强度函数无法识别,但我们显示如何利用协变量和重复观察到该过程的估计估计,并且我们还可以在不调用参数假设的情况下得出渐近的收敛速率。
Point processes in time have a wide range of applications that include the claims arrival process in insurance or the analysis of queues in operations research. Due to advances in technology, such samples of point processes are increasingly encountered. A key object of interest is the local intensity function. It has a straightforward interpretation that allows to understand and explore point process data. We consider functional approaches for point processes, where one has a sample of repeated realizations of the point process. This situation is inherently connected with Cox processes, where the intensity functions of the replications are modeled as random functions. Here we study a situation where one records covariates for each replication of the process, such as the daily temperature for bike rentals. For modeling point processes as responses with vector covariates as predictors we propose a novel regression approach for the intensity function that is intrinsically nonparametric. While the intensity function of a point process that is only observed once on a fixed domain cannot be identified, we show how covariates and repeated observations of the process can be utilized to make consistent estimation possible, and we also derive asymptotic rates of convergence without invoking parametric assumptions.