SIMBAD references

2016MNRAS.458.3821U - Mon. Not. R. Astron. Soc., 458, 3821-3829 (2016/June-1)

Machine-z: rapid machine-learned redshift indicator for Swift gamma-ray bursts.

UKWATTA T.N., WOZNIAK P.R. and GEHRELS N.

Abstract (from CDS):

Studies of high-redshift gamma-ray bursts (GRBs) provide important information about the early Universe such as the rates of stellar collapsars and mergers, the metallicity content, constraints on the re-ionization period, and probes of the Hubble expansion. Rapid selection of high-z candidates from GRB samples reported in real time by dedicated space missions such as Swift is the key to identifying the most distant bursts before the optical afterglow becomes too dim to warrant a good spectrum. Here, we introduce 'machine-z', a redshift prediction algorithm and a 'high-z' classifier for Swift GRBs based on machine learning. Our method relies exclusively on canonical data commonly available within the first few hours after the GRB trigger. Using a sample of 284 bursts with measured redshifts, we trained a randomized ensemble of decision trees (random forest) to perform both regression and classification. Cross-validated performance studies show that the correlation coefficient between machine-z predictions and the true redshift is nearly 0.6. At the same time, our high-z classifier can achieve 80 per cent recall of true high-redshift bursts, while incurring a false positive rate of 20 per cent. With 40 per cent false positive rate the classifier can achieve ∼100 per cent recall. The most reliable selection of high-redshift GRBs is obtained by combining predictions from both the high-z classifier and the machine-z regressor.

Abstract Copyright: © Published by Oxford University Press on behalf of Nucleic Acids Research 2015.This work is written by (a) US Government employee(s) and is in the public domain in the US.

Journal keyword(s): gamma-ray burst: general

Simbad objects: 25

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