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ISINA: INTEGRAL Source Identification Network Algorithm

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arxiv 0807.4653 v1 pith:FI7LKXTZ submitted 2008-07-29 astro-ph

ISINA: INTEGRAL Source Identification Network Algorithm

classification astro-ph
keywords sourcedealingalgorithmcandidateinitialnetworkcreateddataset
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We give an overview of ISINA: INTEGRAL Source Identification Network Algorithm. This machine learning algorithm, using Random Forests, is applied to the IBIS/ISGRI dataset in order to ease the production of unbiased future soft gamma-ray source catalogues. First we introduce the dataset and the problems encountered when dealing with images obtained using the coded mask technique. The initial step of source candidate searching is introduced and an initial candidate list is created. A description of the feature extraction on the initial candidate list is then performed together with feature merging for these candidates. Three training and testing sets are created in order to deal with the diverse timescales encountered when dealing with the gamma-ray sky. Three independent Random Forest are built: one dealing with faint persistent source recognition, one dealing with strong persistent sources and a final one dealing with transients. For the latter, a new transient detection technique is introduced and described: the Transient Matrix. Finally the performance of the network is assessed and discussed using the testing set and some illustrative source examples.

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