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2019:groups:tools:correlations [2019/06/27 16:15]
sezen.sekmen [Quantifying overlaps between analysis search regions using ADLs]
2019:groups:tools:correlations [2019/06/27 17:10] (current)
sezen.sekmen [Quantifying overlaps between analysis search regions using ADLs]
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 Members: Sezen, Wolfgang (, Harrison) Members: Sezen, Wolfgang (, Harrison)
  
-Find and visualize overlaps in a model-independent way, without generating events. ​ Directly sample the event selection.  ​Targeted ​for analysis design phase.+Find and visualize overlaps in a model-independent way, without generating events ​using simple descriptions done using an [[[[2019:​groups:​tools:​adl|analysis description language]].  Directly sample the event selection.  ​Useful ​for analysis design phase, or quick comparisons within experiments (e.gRun2 CMS SUSY pMSSM combination)
  
   * Start from the analysis description,​ which lists objects and event selections.  ​   * Start from the analysis description,​ which lists objects and event selections.  ​
-  * Construct a feature space from all mathematically orthogonal variables (e.g. MET, jet1.pt, jet2.pt, electron1.eta,​ ...).   +  * Construct a feature space from all mathematically orthogonal ​"​basic" ​variables (e.g. MET, jet1.pt, jet2.pt, electron1.eta,​ ...).   
-  * Randomly sample the feature space for each analysis. +  * Randomly sample the feature space for each analysis ​based on cuts on the feature space components (jet1.pt > 100, MET > 299, etc.)
-  * Use the sampled points to compute values for variables such as HT(jets), dphi(jets), MT(lepton, MET), etc.+  * Use the sampled points to compute values for "​composite" ​variables such as HT(jets), dphi(jets), MT(lepton, MET), etc.
   * Compare feature spaces between analyses, find and visualize overlaps and exclusions.   * Compare feature spaces between analyses, find and visualize overlaps and exclusions.
 +  * As a very simple first step, we simply check if two analyses are disjoint in any of the basic variables.
  
  
2019/groups/tools/correlations.1561644913.txt.gz · Last modified: 2019/06/27 16:15 by sezen.sekmen