Please use this identifier to cite or link to this item: https://research.matf.bg.ac.rs/handle/123456789/79
Title: Conditional Neural Process for nonparametric modeling of active galactic nuclei light curves
Authors: Čvorović-Hajdinjak, Iva
Kovačević, Anđelka 
Ilić, Dragana 
Popović, Luka
Dai, Xinyu
Jankov, Isidora
Radović, Viktor
Sánchez-Sáez, Paula
Nikutta, Robert
Affiliations: Astronomy 
Astronomy 
Keywords: accretion disks;general;methods;quasars;statistical
Issue Date: 2022
Rank: M23
Related Publication(s): Spectral line shapes in Astrophysics
Journal: Astronomische Nachrichten
Abstract: 
The consequences of complex disturbed environments in the vicinity of a supermassive black hole are not well represented by standard statistical models of optical variability in active galactic nuclei (AGN). Thus, developing new methodologies for investigating and modeling AGN light curves is crucial. Conditional Neural Processes (CNPs) are nonlinear function models that forecast stochastic time series based on a finite amount of known data without the use of any additional parameters or prior knowledge (kernels). We provide a CNP algorithm that is specifically designed for simulating AGN light curves. It was trained using data from the All-Sky Automated Survey for Supernovae, which included 153 AGN. We present CNP modeling performance for a subsample of five AGNs with distinctive difficult-to-model properties. The performance of CNP in predicting temporal flux fluctuation was assessed using a minimizing loss function, and the results demonstrated the algorithm's usefulness. Our preliminary parallelization experiments show that CNP can efficiently handle large amounts of data. These results imply that CNP can be more effective than standard tools in modeling large volumes of AGN data (as anticipated from time-domain surveys such as the Vera C. Rubin Observatory's Legacy Survey of Space and Time).
URI: https://research.matf.bg.ac.rs/handle/123456789/79
ISSN: 00046337
DOI: 10.1002/asna.20210103
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