English

Studies in Astronomical Time Series Analysis. VI. Bayesian Block Representations

Instrumentation and Methods for Astrophysics 2015-06-05 v3 Statistics Theory Statistics Theory

Abstract

This paper addresses the problem of detecting and characterizing local variability in time series and other forms of sequential data. The goal is to identify and characterize statistically significant variations, at the same time suppressing the inevitable corrupting observational errors. We present a simple nonparametric modeling technique and an algorithm implementing it - an improved and generalized version of Bayesian Blocks (Scargle 1998) - that finds the optimal segmentation of the data in the observation interval. The structure of the algorithm allows it to be used in either a real-time trigger mode, or a retrospective mode. Maximum likelihood or marginal posterior functions to measure model fitness are presented for events, binned counts, and measurements at arbitrary times with known error distributions. Problems addressed include those connected with data gaps, variable exposure, extension to piecewise linear and piecewise exponential representations, multi-variate time series data, analysis of variance, data on the circle, other data modes, and dispersed data. Simulations provide evidence that the detection efficiency for weak signals is close to a theoretical asymptotic limit derived by (Arias-Castro, Donoho and Huo 2003). In the spirit of Reproducible Research (Donoho et al. 2008) all of the code and data necessary to reproduce all of the figures in this paper are included as auxiliary material.

Keywords

Cite

@article{arxiv.1207.5578,
  title  = {Studies in Astronomical Time Series Analysis. VI. Bayesian Block Representations},
  author = {Jeffrey D. Scargle and Jay P. Norris and Brad Jackson and James Chiang},
  journal= {arXiv preprint arXiv:1207.5578},
  year   = {2015}
}

Comments

Added some missing script files and updated other ancillary data (code and data files). To be submitted to the Astophysical Journal

R2 v1 2026-06-21T21:40:25.669Z