An Information-Theoretic Metric for Transient Classification and Novelty Detection
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An Information-Theoretic Metric for Transient Classification and Novelty Detection
Yu-Qian, Ouyang, Alex I. Malz, Ming Lian, Shar Daniels, Federica Bianco, Mathilda Nilsson
AbstractThe development of the observing strategy for the Vera C. Rubin Observatory Legacy Survey of Space and Time (LSST) requires a broad optimization across science cases inside and outside of time-domain astronomy. We introduce a novel metric for transient science with LSST based on information-theoretic cross-entropy. We demonstrate its utility for distinguishing populations of objects and discuss applications for observing strategy / detection pipeline optimization as well as novelty detection and follow-up resource allocation.