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Machine Learning Classification of Time-varying Astrophysical Sources from the Zwicky Transient Facility

ORAL

Abstract

The Zwicky Transient Facility (ZTF) surveys the full Northern sky every two days, providing plentiful observations of time-varying astrophysical sources. The data from this photometric survey can reveal the intrinsic nature of sources, but the sheer amount of data prohibits a fully manual classification process. In this talk, I describe the background and current progress of the ZTF Source Classification Project (SCoPe), which employs a combination of human input and machine learning (ML) algorithms to classify sources. The project trains ML algorithms using an active learning approach, in which subsets of automated classifications are evaluated and revised by human experts before being added to a new iteration of training. By progressively improving our algorithms in this way, we advance toward our goal of providing a reliable public catalog of source classifications for the full ZTF dataset, enabling further research along multiple avenues.

Publication: van Roestel, J. et al., 2021, "The ZTF Source Classification Project. I. Methods and Infrastructure", ApJ, 161, 267<br>Coughlin, M. W. et al., 2021, "The ZTF Source Classification Project - II. Periodicity and variability processing metrics", MNRAS, 505, 2954

Presenters

  • Brian F Healy

    University of Minnesota

Authors

  • Brian F Healy

    University of Minnesota

  • Michael W Coughlin

    University of Minnesota

  • Ashish Mahabal

    Caltech

  • Jan van Roestel

    University of Amsterdam

  • Shreya Anand

    Caltech

  • Mohammed Guiga

    University of Minnesota

  • Dragon Reed

    University of Minnesota

  • Antonio Rodriguez

    Caltech

  • Sugmin Park

    University of Minnesota

  • Kyle Norko

    University of Minnesota

  • Saagar Parikh

    IIT Gandhinagar

  • Tomás Ahumada

    Caltech

  • Mark Kennedy

    University College Cork

  • Niharika Sravan

    Caltech

  • Andrew Drake

    Caltech

  • Matthew Graham

    Caltech

  • Lynne Hillenbrand

    Caltech

  • Mansi Kasliwal

    Caltech

  • Paula Szkody

    University of Washington

  • Joshua Bloom

    University of California, Berkeley

  • Guy Nir

    University of California, Berkeley

  • Robert Stein

    Caltech