The main object of investigation in this paper is a very general regression model in optional setting - when an observed process is an optional semimartingale depending on an unknown parameter. It is well-known that statistical data may present an information flow/filtration without usual conditions. The estimation problem is achieved by means of structural least squares (LS) estimates and their sequential versions. The main results of the paper are devoted to the strong consistency of such LS-estimates. For sequential LS-estimates the property of fixed accuracy is proved.
翻译:本文件中调查的主要目的,是选择环境中的一个非常笼统的回归模型 -- -- 观察到的过程是一个取决于未知参数的可选半成形过程,众所周知,统计数据可能显示信息流动/过滤,而无需通常条件,估计问题是通过结构最低方(LS)估计及其相继版本实现的,文件的主要结果是这类LS估计的强烈一致性。对于连续LS估计,可以证明固定准确性的性质。