SIMBAD references

2015ApJ...806....6M - Astrophys. J., 806, 6 (2015/June-2)

Automatic classification of Kepler planetary transit candidates.

McCAULIFF S.D., JENKINS J.M., CATANZARITE J., BURKE C.J., COUGHLIN J.L., TWICKEN J.D., TENENBAUM P., SEADER S., LI J. and COTE M.

Abstract (from CDS):

In the first three years of operation, the Kepler mission found 3697 planet candidates (PCs) from a set of 18,406 transit-like features detected on more than 200,000 distinct stars. Vetting candidate signals manually by inspecting light curves and other diagnostic information is a labor intensive effort. Additionally, this classification methodology does not yield any information about the quality of PCs; all candidates are as credible as any other. The torrent of exoplanet discoveries will continue after Kepler, because a number of exoplanet surveys will have an even broader search area. This paper presents the application of machine-learning techniques to the classification of the exoplanet transit-like signals present in the Kepler light curve data. Transit-like detections are transformed into a uniform set of real-numbered attributes, the most important of which are described in this paper. Each of the known transit-like detections is assigned a class of PC; astrophysical false positive; or systematic, instrumental noise. We use a random forest algorithm to learn the mapping from attributes to classes on this training set. The random forest algorithm has been used previously to classify variable stars; this is the first time it has been used for exoplanet classification. We are able to achieve an overall error rate of 5.85% and an error rate for classifying exoplanets candidates of 2.81%.

Abstract Copyright:

Journal keyword(s): astronomical databases: miscellaneous - binaries: eclipsing - catalogs - methods: statistical - planets and satellites: detection - techniques: photometric

Simbad objects: 3

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