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Estimating photometric redshifts using genetic algorithms

Authors :
Ellis, Richard
Allen, Tony
Tuson, Andrew
Miles, Nick
Freitas, Alex A.
Serjeant, Stephen
Ellis, Richard
Allen, Tony
Tuson, Andrew
Miles, Nick
Freitas, Alex A.
Serjeant, Stephen
Publication Year :
2006

Abstract

Photometry is used as a cheap and easy way to estimate redshifts of galaxies, which would otherwise require considerable amounts of expensive telescope time. However, the analysis of photometric redshift datasets is a task where it is sometimes difficult to achieve a high classification accuracy. This work presents a custom Genetic Algorithm (GA) for mining the Hubble Deep Field North (HDF-N) datasets to achieve accurate IF-THEN classification rules. This kind of knowledge representation has the advantage of being intuitively comprehensible to the user, facilitating astronomers' interpretation of discovered knowledge. The GA is tested against the state of the art decision tree algorithm C5.0 [6] achieving significantly better results.

Details

Database :
OAIster
Notes :
Estimating photometric redshifts using genetic algorithms
Publication Type :
Electronic Resource
Accession number :
edsoai.on1119657995
Document Type :
Electronic Resource