Tests for structural breaks in time series should ideally be sensitive to breaks in the parameter of interest, while being robust to nuisance changes. Statistical analysis thus needs to allow for some form of nonstationarity under the null hypothesis of no change. In this paper, estimators for integrated parameters of locally stationary time series are constructed and a corresponding functional central limit theorem is established, enabling change-point inference for a broad class of parameters under mild assumptions. The proposed framework covers all parameters which may be expressed as nonlinear functions of moments, for example kurtosis, autocorrelation, and coefficients in a linear regression model. To perform feasible inference based on the derived limit distribution, a bootstrap variant is proposed and its consistency is established. The methodology is illustrated by means of a simulation study and by an application to high-frequency asset prices.
翻译:时间序列结构间断试验最好对利益参数的断裂十分敏感,同时对骚扰性变化保持稳健。统计分析因此需要考虑到在不变假设下不作任何改变的某种形式的非静止性。本文构建了当地固定时间序列综合参数的估测器,并确定了相应的功能中枢定理,允许在轻度假设下对广泛类别的参数进行变化点推断。拟议框架涵盖所有可表述为非线性瞬时函数的参数,例如库尔托西、自动关系和线性回归模型中的系数。为了根据衍生的极限分布进行可行的推断,提议了一个靴式变体,并确定了其一致性。方法通过模拟研究和对高频资产价格的应用加以说明。