Fractionally integrated autoregressive moving average (FIARMA) processes have been widely and successfully used to model and predict univariate time series exhibiting long range dependence. Vector and functional extensions of these processes have also been considered more recently. Here we study these processes by relying on a spectral domain approach in the case where the processes are valued in a separable Hilbert space H0. In this framework, the usual univariate long memory parameter d is replaced by a long memory operator D acting on H0, leading to a class of H0-valued FIARMA(D, p, q) processes, where p and q are the degrees of the AR and MA polynomials. When D is a normal operator, we provide a necessary and sufficient condition for the D-fractional integration of an H0-valued ARMA(p, q) process to be well defined. Then, we derive the best predictor for a class of causal FIARMA processes and study how this best predictor can be consistently estimated from a finite sample of the process. To this end, we provide a general result on quadratic functionals of the periodogram, which incidentally yields a result of independent interest. Namely, for any ergodic stationary process valued in H0 with finite second moment, the empirical autocovariance operator converges, in trace-norm, to the true autocovariance operator almost surely at each lag.
翻译:自动递增移动平均值(FIARMA)过程已被广泛和成功广泛使用,用于模拟和预测显示长距离依赖的单向时间序列(FIARMA)过程。这些过程的矢量和功能扩展最近也得到了更多的考虑。这里我们研究这些过程时,依靠光谱域方法,如果这些过程在可分离的Hilbert空间H0中被估价。在此框架内,通常的单向长存储器长存储参数 d 被一个在H0上动作的长内存操作器D 所取代,从而导致一个H0价值的FIRA(D, p, q) 过程,其中p和q是AR和MA 多元度的度。当D是正常的操作器时,我们通过使用光谱域法方法来研究这些过程。在此框架内,我们为H0值的ARMAp(q) 过程的D(HO- ALMAp, q) 过程的Dractionality 整合提供了必要和充分的条件。然后,我们从一个有限的样本中得出这一最佳的尾数级预测器可以持续估计。我们提供了在QO- liveralgoal- astoralgoalimal asimpal asionalim asion impalendal mainal