Doubly stochastic Poisson processes, also known as the Cox processes, frequently occur in various scientific fields. In this article, motivated primarily by analyzing Cox process data in biophysics, we propose a nonparametric kernel-based inference method. We conduct a detailed study, including an asymptotic analysis, of the proposed method, and provide guidelines for its practical use, introducing a fast and stable regression method for bandwidth selection. We apply our method to real photon arrival data from recent single-molecule biophysical experiments, investigating proteins' conformational dynamics. Our result shows that conformational fluctuation is widely present in protein systems, and that the fluctuation covers a broad range of time scales, highlighting the dynamic and complex nature of proteins' structure. © Institute ol Mathematical Statistics, 2010.
CITATION STYLE
Zhang, T., & Kou, S. C. (2010). Nonparametric inference of doubly stochastic Poisson process data via the kernel method. Annals of Applied Statistics, 4(4), 1913–1941. https://doi.org/10.1214/10-AOAS352
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