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METHODOLOGY AND CONVERGENCE RATES FOR FUNCTIONAL TIME SERIES REGRESSION

机译:功能时间序列回归的方法和收敛速率

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The functional linear model extends the notion of linear regression to the case where the response and covariates are iid elements of an infinite-dimensional Hilbert space. The unknown to be estimated is a Hilbert-Schmidt operator, whose inverse is by definition unbounded, rendering the problem of inference ill-posed. In this paper, we consider the more general context where the sample of response/covariate pairs forms a weakly dependent stationary process in the respective product Hilbert space: simply stated, the case where we have a regression between functional time series. We consider a general framework of potentially nonlinear processes, expoiting recent advances in the spectral analysis of functional time series. This allows us to quantify the inherent ill-posedness, and to motivate a Tikhonov regularisation technique in the frequency domain. Our main result is the rate of convergence for the corresponding estimators of the regression coefficients, the latter forming a summable sequence in the space of Hilbert-Schmidt operators. In a sense, our main result can be seen as a generalisation of the classical functional linear model rates to the case of time series, and rests only upon Brillinger-type mixing conditions. It is seen that, just as the covariance operator eigenstructure plays a central role in the independent case, so does the spectral density operator's eigenstructure in the dependent case. While the analysis becomes considerably more involved in the dependent case, the rates are strikingly comparable to those of the i.i.d. case, but at the expense of an additional factor caused by the necessity to estimate the spectral density operator at a nonparametric rate, as opposed to the parametric rate for covariance operator estimation.
机译:功能线性模型将线性回归的概念扩展到响应和协调因子是无限维希尔伯特空间的IID元素的情况。未知的估计是Hilbert-Schmidt运算符,其逆定义无界,呈现推理的推理问题。在本文中,我们考虑更常见的背景,其中响应/协变量对在各个产品Hilbert空间中形成弱依赖的静止过程:简单地说,我们在功能时间序列之间具有回归的情况。我们考虑潜在的非线性流程的一般框架,近期功能时间序列光谱分析的最近进步。这使我们能够量化固有的弊端,并在频域中激励Tikhonov正规化技术。我们的主要结果是回归系数的相应估计器的收敛速度,后者在希尔伯特 - 施密特运营商的空间中形成了可相同的序列。从某种意义上说,我们的主要结果可以被视为经典功能线性型号的概括到时间序列的情况,只休息在Brillinger型混合条件下。可以看出,正如协方差操作员特征结构在独立情况下发挥着核心作用,所以谱密度操作员在依赖性情况下也是如此。虽然分析变得相当多参与依赖的情况,但该速率与I.I.D的速率毫微相当。案例,但以额外的因素为代价,这是必要地以非参数率估计光谱密度算子,而不是协方差运算符估计的参数速率。

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