Selection of Burst-like Transients and Stochastic Variables Using Multi-Band Image Differencing in the Pan-STARRS1 Medium-Deep Survey
S. Kumar, S. Gezari, S. Heinis, R. Chornock, E. Berger, A. Rest, M.E., Huber, R.J. Foley, G. Narayan, G.H. Marion, D. Scolnic, A. Soderberg, A., Lawrence, C.W. Stubbs, R.P. Kirshner, A.G. Riess, S.J. Smartt, K. Smith, W.M, Wood-Vasey, W. S. Burgett, K. C. Chambers, H. Flewelling

TL;DR
This paper introduces a new multi-band image differencing method to classify extragalactic sources in the Pan-STARRS1 survey into burst-like transients and stochastic variables, improving real-time identification of AGN and supernovae.
Contribution
The study develops a novel classification approach combining light-curve modeling and clustering, achieving high purity in identifying AGN and supernovae in survey data.
Findings
Classified 4361 sources into 1529 burst-like and 2262 stochastic variables.
Achieved 95% purity for AGN and 91% for supernovae in classifications.
Identified photometric priors for real-time source identification in future surveys.
Abstract
We present a novel method for the light-curve characterization of Pan-STARRS1 Medium Deep Survey (PS1 MDS) extragalactic sources into stochastic variables (SV) and burst-like (BL) transients, using multi-band image-differencing time-series data. We select detections in difference images associated with galaxy hosts using a star/galaxy catalog extracted from the deep PS1 MDS stacked images, and adopt a maximum a posteriori formulation to model their difference-flux time-series in four Pan-STARRS1 photometric bands g,r,i, and z. We use three deterministic light-curve models to fit burst-like transients and one stochastic light curve model, the Ornstein-Uhlenbeck process, in order to fit variability that is characteristic of active galactic nuclei (AGN). We assess the quality of fit of the models band-wise source-wise, using their estimated leave-out-one cross-validation likelihoods and…
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