Decomposing Complexity Mixture Processes on Metric Spaces

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Abstract

Complexity of a random process whose Small Ball Probability behaves asymptotically in a monomial way is a concept tied to the minimum number of random sources used to define the process. In this paper the new notion of complexity mixture process is defined and discussed from a theoretical point of view, and an algorithm based on a Bayesian principle is implemented to unravel the underlying complete complexity structure of the process starting from a sample of observed trajectories. To evaluate the performance of this approach under various controlled settings, a Monte Carlo simulation is performed. Finally, the method is applied to identify the mixture complexity structure of two real data sets.
Lingua originaleInglese
Numero di pagine22
RivistaJournal of Statistical Computation and Simulation
Stato di pubblicazioneIn press - 2 ott 2025

Keywords

  • functional data
  • nonparametric methods
  • small ball probability
  • complexity mixture
  • complexity index

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