English

Bayesian Blocks, A New Method to Analyze Structure in Photon Counting Data

Astrophysics 2015-06-24 v2

Abstract

I describe a new time-domain algorithm for detecting localized structures (bursts), revealing pulse shapes, and generally characterizing intensity variations. The input is raw counting data, in any of three forms: time-tagged photon events (TTE), binned counts, or time-to-spill (TTS) data. The output is the most likely segmentation of the observation into time intervals during which the photon arrival rate is perceptibly constant -- i.e. has a fixed intensity without statistically significant variations. Since the analysis is based on Bayesian statistics, I call the resulting structures Bayesian Blocks. Unlike most, this method does not stipulate time bins -- instead the data themselves determine a piecewise constant representation. Therefore the analysis procedure itself does not impose a lower limit to the time scale on which variability can be detected. Locations, amplitudes, and rise and decay times of pulses within a time series can be estimated, independent of any pulse-shape model -- but only if they do not overlap too much, as deconvolution is not incorporated. The Bayesian Blocks method is demonstrated by analyzing pulse structure in BATSE γ\gamma-ray data. The MatLab scripts and sample data can be found on the WWW at: http://george.arc.nasa.gov/~scargle/papers.html

Keywords

Cite

@article{arxiv.astro-ph/9711233,
  title  = {Bayesian Blocks, A New Method to Analyze Structure in Photon Counting Data},
  author = {Jeffrey D. Scargle},
  journal= {arXiv preprint arXiv:astro-ph/9711233},
  year   = {2015}
}

Comments

42 pages, 2 figures; revision correcting mathematical errors; clarifications; removed Cyg X-1 section