A new distance to classify time series is proposed. The underlying generating process is assumed to be a diffusion process solution to stochastic differential equations and observed at discrete times. The mesh of observations is not required to shrink to zero. The new dissimilarity measure is based on the L1 distance between the Markov operators estimated on two observed paths. Simulation experiments are used to analyze the performance of the proposed distance under several conditions including perturbation and misspecification. As an example, real financial data from NYSE/NASDAQ stocks are analyzed and evidence is provided that the new distance seems capable to catch differences in both the drift and diffusion coefficients better than other commonly used non-parametric distances. Corresponding software is available in the add-on package sde for the R statistical environment. © 2009 Elsevier B.V. All rights reserved.
Clustering of discretely observed diffusion processes / DE GREGORIO, Alessandro; Maria S., Iacus. - In: COMPUTATIONAL STATISTICS & DATA ANALYSIS. - ISSN 0167-9473. - 54:2(2010), pp. 598-606. [10.1016/j.csda.2009.10.005]
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|Titolo:||Clustering of discretely observed diffusion processes|
|Data di pubblicazione:||2010|
|Citazione:||Clustering of discretely observed diffusion processes / DE GREGORIO, Alessandro; Maria S., Iacus. - In: COMPUTATIONAL STATISTICS & DATA ANALYSIS. - ISSN 0167-9473. - 54:2(2010), pp. 598-606. [10.1016/j.csda.2009.10.005]|
|Appartiene alla tipologia:||01a Articolo in rivista|