TY - GEN
T1 - Variability detection by change-point analysis
AU - Chang, Seo Won
AU - Byun, Yong Ik
AU - Hahm, Jaegyoon
PY - 2012
Y1 - 2012
N2 - We describe a method to detect short-term variability based on the change-point analysis with filtering algorithm using local statistics. The use of cumulative sum scheme and bootstrap rank statistics as a means of detecting a series of change points is discussed. By applying this method to over 30,000 lightcurves from the MMT transit survey data, we found previously unknown evidences about stellar variability (including a total of 606 flare events, 18 eclipsing-like features, and 3 transit-like features). In particular, this approach will be effective in detecting non-periodic events in massive astronomical time series data. The detection and characterization of variability is often the first step to understand the nature of various cosmic objects. Most variability detection methods require conventional models that are mainly focused on the strictly periodic signals, and are not suitable for the study of arbitrary-shaped, non-periodic, and sporadically occurring variations, especially those of short time scales. Also, in many cases, signal estimation is equated with smoothing of data for de-noising. This sometimes discards vital information in time series data.We introduce a non-parametric method to extract all significant features based on the change-point analysis (CPA) with filtering algorithm using local statistics.
AB - We describe a method to detect short-term variability based on the change-point analysis with filtering algorithm using local statistics. The use of cumulative sum scheme and bootstrap rank statistics as a means of detecting a series of change points is discussed. By applying this method to over 30,000 lightcurves from the MMT transit survey data, we found previously unknown evidences about stellar variability (including a total of 606 flare events, 18 eclipsing-like features, and 3 transit-like features). In particular, this approach will be effective in detecting non-periodic events in massive astronomical time series data. The detection and characterization of variability is often the first step to understand the nature of various cosmic objects. Most variability detection methods require conventional models that are mainly focused on the strictly periodic signals, and are not suitable for the study of arbitrary-shaped, non-periodic, and sporadically occurring variations, especially those of short time scales. Also, in many cases, signal estimation is equated with smoothing of data for de-noising. This sometimes discards vital information in time series data.We introduce a non-parametric method to extract all significant features based on the change-point analysis (CPA) with filtering algorithm using local statistics.
UR - http://www.scopus.com/inward/record.url?scp=84896619401&partnerID=8YFLogxK
U2 - 10.1007/978-1-4614-3520-4_48
DO - 10.1007/978-1-4614-3520-4_48
M3 - Conference contribution
SN - 9781461435198
T3 - Lecture Notes in Statistics
SP - 491
EP - 493
BT - Statistical Challenges in Modern Astronomy V
PB - Springer Science and Business Media, LLC
T2 - 5th Statistical Challenges in Modern Astronomy Symposium, SCMA 2011
Y2 - 13 June 2011 through 15 June 2011
ER -