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Singular spectrum analysis for astronomical time series: Constructing a parsimonious hypothesis test

Chapter
Publication Date:
2016
abstract:
We present a data-adaptive spectral method - Monte Carlo Singular Spectrum Analysis (MC-SSA) - and its modification to tackle astrophysical problems. Through numerical simulations we show the ability of the MC-SSA in dealing with 1=f beta power-law noise affected by photon counting statistics. Such noise process is simulated by a first-order autoregressive, AR(1) process corrupted by intrinsic Poisson noise. In doing so, we statistically estimate a basic stochastic variation of the source and the corresponding fluctuations due to the quantum nature of light. In addition, MC-SSA test retains its effectiveness even when a significant percentage of the signal falls below a certain level of detection, e.g., caused by the instrument sensitivity. The parsimonious approach presented here may be broadly applied, from the search for extrasolar planets to the extraction of low-intensity coherent phenomena probably hidden in high energy transients.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
Singular Spectrum Analysis
List of contributors:
Ciszak, Marzena; Marino, FRANCESCO MARIO SIMONE
Authors of the University:
CISZAK MARZENA
MARINO FRANCESCO MARIO SIMONE
Handle:
https://iris.cnr.it/handle/20.500.14243/347151
Book title:
The Universe of Digital Sky Surveys: A Meeting to Honour the 70th Birthday of Massimo Capaccioli
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