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Liu, S., & Wu, W. (2017). Generalized Mahalanobis Depth In Point Process And Its Application In Neural Coding. Annals Of Applied Statistics. Retrieved from http://purl.flvc.org/fsu/fd/FSU_libsubv1_wos_000408732000021
In this paper, we propose to generalize the notion of depth in temporal point process observations. The new depth is defined as a weighted product of two probability terms: (1) the number of events in each process, and (2) the center-outward ranking on the event times conditioned on the number of events. In this study, we adopt the Poisson distribution for the first term and the Mahalanobis depth for the second term. We propose an efficient boot-strapping approach to estimate parameters in the defined depth. In the case of Poisson process, the observed events are order statistics where the parameters can be estimated robustly with respect to sample size. We demonstrate the use of the new depth by ranking realizations from a Poisson process. We also test the new method in classification problems using simulations as well as real neural spike train data. It is found that the new framework provides more accurate and robust classifications as compared to commonly used likelihood methods.
Liu, S., & Wu, W. (2017). Generalized Mahalanobis Depth In Point Process And Its Application In Neural Coding. Annals Of Applied Statistics. Retrieved from http://purl.flvc.org/fsu/fd/FSU_libsubv1_wos_000408732000021