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UW classification: new background rejection trees

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vertex-thick. AcdActiveDist -199 | AcdRibbonActDist ... vertex-high. prefilter: remove if true. category. Gamma classification. Analysis Meeting 24Oct 05 ... – PowerPoint PPT presentation

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Title: UW classification: new background rejection trees


1
UW classificationnew background rejection trees

2
The eight selections (from Bill)
3
The prefilter cuts
Gamma classification Gamma classification
category prefilter remove if true
vertex-high AcdActiveDist gt -10 CalTrackAngle gt .5 CalTrackDoca gt 40
vertex-med AcdActiveDist gt -199 AcdRibbonActDist gt -1900 CalTrackDoca gt 200
vertex-thin AcdActiveDist gt -199 AcdRibbonActDist gt -1000
vertex-thick AcdUpperTileCount gt 0 AcdLowerTileCount gt 1 AcdRibbonActDist gt -1999
track-high CalTrackDoca gt 30    CalTrackAngle gt .3
track-med AcdActiveDist gt -199 AcdRibbonActDist gt -1900 CalTrackDoca gt 40     CalTrackAngle gt .5 CalXtalRatio gt .85
track-thin AcdActiveDist gt -199 AcdRibbonActDist gt -1999 CalTrackDoca gt 200    EvtECalTransRms lt .8
track-thick AcdActiveDist gt -199 AcdRibbonActDist gt -1999 AcdDoca lt 1999 CalTrackDoca gt 200    EvtECalTransRms gt 2.5 CalMaxXtalRatio gt .8 Tkr1FirstChisq gt 2.5    Tkr1ToTTrAve gt 2
4
Implementation in merit
file structure
  • Each tree is described by two files
  • dtree.txt ascii file with a list of weighted
    trees and nodes
  • tree specify the weight to assign to the tree
  • branch variable index, cut value
  • leaf purity
  • variables.txt list of the corresponding tuple
    variables
  • Evaluation is by passing a vector of floats,
    ordered according to the variable list.
  • Proposal to incorporate the prefilter cut in the
    tree description

5
Training details
  • Weight signal and background to be the same
  • Train on the EVEN events, with optional boosting
  • Test with ODD events
  • Save training and testing efficiency curves

6
Boosting what does it do?
  • Nice interpolation for low background
  • Not much improvement in actual separation (so far)

7
Preliminary single-tree background
8
What about the energy resolution?Validity
fractions
9
The fraction of time each estimate is best
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