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Functional Time Series Prediction Under Partial Observation of the Future Curve

Shuhao Jiao, Alexander Aue, Hernando Ombao

2021Journal of the American Statistical Association15 citationsDOIOpen Access PDF

Abstract

–This article tackles one of the most fundamental goals in functional time series analysis which is to provide reliable predictions for future functions. Existing methods for predicting a complete future functional observation use only completely observed trajectories. We develop a new method, called partial functional prediction (PFP), which uses both completely observed trajectories and partial information (available partial data) on the trajectory to be predicted. The PFP method includes an automatic selection criterion for tuning parameters based on minimizing the prediction error, and the convergence rate of the PFP prediction is established. Simulation studies demonstrate that incorporating partially observed trajectory in the prediction outperforms existing methods with respect to mean squared prediction error. The PFP method is illustrated to be superior in the analysis of environmental data and traffic flow data.

Topics & Concepts

TrajectorySeries (stratigraphy)Computer scienceConvergence (economics)Time seriesFunctional data analysisAlgorithmMean squared errorData miningMathematical optimizationMathematicsMachine learningStatisticsEconomicsBiologyPaleontologyPhysicsEconomic growthAstronomyTime Series Analysis and ForecastingBlind Source Separation TechniquesStatistical Methods and Inference