Caponera, AlessiaPanaretos, Victor M.2022-08-012022-08-012022-08-012022-10-0110.1016/j.spl.2022.109575https://infoscience.epfl.ch/handle/20.500.14299/189516WOS:000827270400004We consider the problem of estimating the autocorrelation operator of an autoregressive Hilbertian process. By means of a Tikhonov approach, we establish a general result that yields the convergence rate of the estimated autocorrelation operator as a function of the rate of convergence of the estimated lag zero and lag one autocovariance operators. The result is general in that it can accommodate any consistent estimators of the lagged autocovariances. Consequently it can be applied to processes under any mode of observation: complete, discrete, sparse, and/or with measurement errors. An appealing feature is that the result does not require delicate spectral decay assumptions on the autocovariances but instead rests on natural source conditions. The result is illustrated by application to important special cases. (C) 2022 The Author(s). Published by Elsevier B.V.Statistics & ProbabilityMathematicsfunctional time seriessource conditiontikhonov regularizationOn the rate of convergence for the autocorrelation operator in functional autoregressiontext::journal::journal article::research article