Maximum approximate entropy and r threshold: A new approach for regularity changes detection
Abstract
Approximate entropy (ApEn) has been widely used as an estimator of regularity in many scientific fields. It has proved to be a useful tool because of its ability to distinguish different system's dynamics when there is only available short-length noisy data. Incorrect parameter selection (embedding dimension , threshold and data length ) and the presence of noise in the signal can undermine the ApEn discrimination capacity. In this work we show that () can also be used as a feature to discern between dynamics. Moreover, the combined use of and allows a better discrimination capacity to be accomplished, even in the presence of noise. We conducted our studies using real physiological time series and simulated signals corresponding to both low- and high-dimensional systems. When is incapable of discerning between different dynamics because of the noise presence, our results suggest that provides additional information that can be useful for classification purposes. Based on cross-validation tests, we conclude that, for short length noisy signals, the joint use of and can significantly decrease the misclassification rate of a linear classifier in comparison with their isolated use.
Cite
@article{arxiv.1405.7637,
title = {Maximum approximate entropy and r threshold: A new approach for regularity changes detection},
author = {Juan F. Restrepo and Gastón Schlotthauer and María E. Torres},
journal= {arXiv preprint arXiv:1405.7637},
year = {2014}
}