Is it possible to detect if the sample paths of a stochastic process almost surely admit a finite expansion with respect to some/any basis? The determination is to be made on the basis of a finite collection of discretely/noisily observed sample paths. We show that it is indeed possible to construct a hypothesis testing scheme that is almost surely guaranteed to make only finitely many incorrect decisions as more data are collected. Said differently, our scheme almost certainly detects whether the process has a finite or infinite basis expansion for all sufficiently large sample sizes. Our approach relies on Cover's classical test for the irrationality of a mean, combined with tools for the non-parametric estimation of covariance operators.
翻译:能否测出一个随机过程的样本路径是否几乎肯定地承认在某些/任何基础上有一定的扩展? 是否要根据有限地收集离散/神秘地观察的样本路径来确定? 我们证明确实有可能建立一个假设测试计划,几乎可以肯定地保证随着更多的数据的收集,只作出有限的许多不正确的决定。 不同的是,我们的计划几乎肯定地测出该过程是否对所有足够大的样本大小都具有有限或无限的扩展基础。 我们的方法依赖于盖伊的典型测试,以判断一种平均值是否不合理,同时使用工具对同源操作者进行非参数估计。