Inference on the change point in high dimensional time series models via plug in least squares

07/03/2020
by   Abhishek Kaul, et al.
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We study a plug in least squares estimator for the change point parameter where change is in the mean of a high dimensional random vector under subgaussian or subexponential distributions. We obtain sufficient conditions under which this estimator possesses sufficient adaptivity against plug in estimates of mean parameters in order to yield an optimal rate of convergence O_p(ξ^-2) in the integer scale. This rate is preserved while allowing high dimensionality as well as a potentially diminishing jump size ξ, provided slog (p∨ T)=o(√(Tl_T)) or slog^3/2(p∨ T)=o(√(Tl_T)) in the subgaussian and subexponential cases, respectively. Here s,p,T and l_T represent a sparsity parameter, model dimension, sampling period and the separation of the change point from its parametric boundary. Moreover, since the rate of convergence is free of s,p and logarithmic terms of T, it allows the existence of limiting distributions. These distributions are then derived as the argmax of a two sided negative drift Brownian motion or a two sided negative drift random walk under vanishing and non-vanishing jump size regimes, respectively. Thereby allowing inference of the change point parameter in the high dimensional setting. Feasible algorithms for implementation of the proposed methodology are provided. Theoretical results are supported with monte-carlo simulations.

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