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Published February 2018 | Submitted
Journal Article Open

Nonparametric Methods in Astronomy: Think, Regress, Observe—Pick Any Three

Abstract

Telescopes are much more expensive than astronomers, so it is essential to minimize required sample sizes by using the most data-efficient statistical methods possible. However, the most commonly used model-independent techniques for finding the relationship between two variables in astronomy are flawed. In the worst case they can lead without warning to subtly yet catastrophically wrong results, and even in the best case they require more data than necessary. Unfortunately, there is no single best technique for nonparametric regression. Instead, we provide a guide for how astronomers can choose the best method for their specific problem and provide a python library with both wrappers for the most useful existing algorithms and implementations of two new algorithms developed here.

Additional Information

© 2018. The Astronomical Society of the Pacific. Received 2017 August 22; accepted 2017 December 14; published 2018 January 15. The authors thank Richard Yi for several helpful conversations in developing these ideas and the anonymous referee for a review process that substantially improved this work. The authors would also like to thank Jogesh Babu, Douglas Boubert, Peter Capak, Jens Hjorth, Nick Lee, Dan Masters, Josh Speagle, and Sune Toft for helpful comments. C.S. acknowledges support from the ERC Consolidator Grant funding scheme (project ConTExt, grant number No. 648179) and from the Carlsberg Foundation. A.S.J. is supported by a Marshall scholarship.

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August 19, 2023
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