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Predicting temperature curve based on fast kNN local linear estimation of the conditional distribution function.

Ibrahim M AlmanjahieZoulikha KaidAli LaksaciMustapha Rachdi
Published in: PeerJ (2021)
Predicting the yearly curve of the temperature, based on meteorological data, is essential for understanding the impact of climate change on humans and the environment. The standard statistical models based on the big data discretization in the finite grid suffer from certain drawbacks such as dimensionality when the size of the data is large. We consider, in this paper, the predictive region problem in functional time series analysis. We study the prediction by the shortest conditional modal interval constructed by the local linear estimation of the cumulative function of Y given functional input variable X . More precisely, we combine the k -Nearest Neighbors procedure to the local linear algorithm to construct two estimators of the conditional distribution function. The main purpose of this paper is to compare, by a simulation study, the efficiency of the two estimators concerning the level of dependence. The feasibility of these estimators in the functional times series prediction is examined at the end of this paper. More precisely, we compare the shortest conditional modal interval predictive regions of both estimators using real meteorological data.
Keyphrases
  • big data
  • machine learning
  • climate change
  • artificial intelligence
  • electronic health record
  • air pollution
  • wastewater treatment
  • neural network
  • minimally invasive
  • risk assessment