Construction of a Calibrated Probabilistic Classification Catalog: Application to 50k Variable Sources in the All-Sky Automated Survey

@article{Richards2012ConstructionOA,
  title={Construction of a Calibrated Probabilistic Classification Catalog: Application to 50k Variable Sources in the All-Sky Automated Survey},
  author={J. Richards and D. Starr and A. Miller and J. S. Bloom and N. Butler and H. Brink and Arien Crellin-Quick},
  journal={Astrophysical Journal Supplement Series},
  year={2012},
  volume={203},
  pages={32}
}
  • J. Richards, D. Starr, +4 authors Arien Crellin-Quick
  • Published 2012
  • Physics, Mathematics
  • Astrophysical Journal Supplement Series
  • With growing data volumes from synoptic surveys, astronomers necessarily must become more abstracted from the discovery and introspection processes. Given the scarcity of follow-up resources, there is a particularly sharp onus on the frameworks that replace these human roles to provide accurate and well-calibrated probabilistic classification catalogs. Such catalogs inform the subsequent follow-up, allowing consumers to optimize the selection of specific sources for further study and permitting… CONTINUE READING
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