Climate change analysis from LRD manifold functional regression Ovalle Muñoz, Diana Paola María Dolores, Ruiz Medina Connected and compact two--point homogeneous spaces LRD manifold functional time series Temporal strong correlated manifold map data Manifold multiple functional regression A functional nonlinear regression approach, incorporating time information in the covariates, is proposed for temporal strong correlated manifold map data sequence analysis. Specifically, the functional regression parameters are supported on a connected and compact two–point homogeneous space. The Generalized Least–Squares (GLS) parameter estimator is computed in the linearized model, having error term displaying manifold scale varying Long Range Dependence (LRD). The performance of the theoretical and plug–in nonlinear regression predictors is illustrated by simulations on sphere, in terms of the empirical mean of the computed spherical functional absolute errors. In the case where the second–order structure of the functional error term in the linearized model is unknown, its estimation is performed by minimum contrast in the functional spectral domain. The linear case is illustrated in the Supplementary Material, revealing the effect of the slow decay velocity in time of the trace norms of the covariance operator family of the regression LRD error term. The purely spatial statistical analysis of atmospheric pressure at high cloud bottom, and downward solar radiation flux in Alegría et al. (2021) is extended to the spatiotemporal context, illustrating the numerical results from a generated synthetic data set. 2024-07-03T06:37:48Z 2024-07-03T06:37:48Z 2024-06-29 preprint Ovalle–Muñoz, D.P., Ruiz–Medina, M.D. Climate change analysis from LRD manifold functional regression. arXiv:2407.00381 (2024). https://doi.org/10.48550/arXiv.2407.00381 https://hdl.handle.net/10481/92935 10.48550/arXiv.2407.00381 eng http://creativecommons.org/licenses/by-nc-nd/4.0/ open access Attribution-NonCommercial-NoDerivatives 4.0 Internacional arXiv