Entropy measures for stochastic processes with applications in functional anomaly detection

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Abstract

We propose a definition of entropy for stochastic processes. We provide a reproducing kernel Hilbert space model to estimate entropy from a random sample of realizations of a stochastic process, namely functional data, and introduce two approaches to estimate minimum entropy sets. These sets are relevant to detect anomalous or outlier functional data. A numerical experiment illustrates the performance of the proposed method; in addition, we conduct an analysis of mortality rate curves as an interesting application in a real-data context to explore functional anomaly detection.

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APA

Martos, G., Hernández, N., Muñoz, A., & Moguerza, J. M. (2018). Entropy measures for stochastic processes with applications in functional anomaly detection. Entropy, 20(1). https://doi.org/10.3390/e20010033

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