Analysis Meeting 31Oct 05T. Burnett1 Classification, etc. status at UW Background rejection for the v7r2 “500M” run at SLAC”: first look at v7r3.

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Analysis Meeting 31Oct 05T. Burnett1 Classification, etc. status at UW Background rejection for the v7r2 “500M” run at SLAC”: first look at v7r3.

Analysis Meeting 31Oct 05T. Burnett2 Application of boosted trees New application in GlastClassify package: apply –Adds or replaces tuple values with recalculated “CT” variables CTgoodCal CTvertex CTgoodPsf CTgamma CTgammaType root [2] t.Print("CT*") ****************************************************************************** *Tree :MeritTuple: Glast tuple * *Entries : : Total = bytes File Size = * * : : Tree compression factor = 2.07 * ****************************************************************************** *Br 0 :CTgoodCal : CTgoodCal/D * *Entries : : Total Size= bytes File Size = * *Baskets : 642 : Basket Size= bytes Compression= * * * *Br 1 :CTvertex : CTvertex/D * *Entries : : Total Size= bytes File Size = * *Baskets : 642 : Basket Size= bytes Compression= * * * *Br 2 :CTgoodPsf : CTgoodPsf/D * *Entries : : Total Size= bytes File Size = * *Baskets : 642 : Basket Size= bytes Compression= 2.61 * * * *Br 3 :CTgamma : CTgamma/D * *Entries : : Total Size= bytes File Size = * *Baskets : 642 : Basket Size= bytes Compression= * * * *Br 4 :CTgammaType : CTgammaType/D * *Entries : : Total Size= bytes File Size = * *Baskets : 642 : Basket Size= bytes Compression= 8.80 * * *

Analysis Meeting 31Oct 05T. Burnett3 Effect of boosting train_efficiency: single tree. Train on UW v7r2 background runs test_efficiency: after boosting 10 times, v2r2 SLAC v7r2 runs

Analysis Meeting 31Oct 05T. Burnett4 SLAC v7r2 “500M” livetime: Simply count the runs that have data. –Note: the number of events per run, or second, is less than the down-link rate (~550 Hz) due to the “prune”. –Above gives 8753 seconds

Analysis Meeting 31Oct 05T. Burnett5 Current status of UW background rejection Fails science requirement

Analysis Meeting 31Oct 05T. Burnett6 New “500 M” v3r3 run Fails science requirement