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Lost Jet Update

Lost Jet Update. John Krane Iowa State University jet/MET Meeting 8/29/02. reminder of problem performance metric parameter choice. CDF Physics groups are not using Run II algorithm. Problem: unclustered event energy. CDF: Matthais Toennesmann DØ: me, Vishnu Z., Bob H.

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Lost Jet Update

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  1. Lost Jet Update John Krane Iowa State University jet/MET Meeting 8/29/02 • reminder of problem • performance metric • parameter choice

  2. CDF Physics groups are not using Run II algorithm Problem: unclustered event energy • CDF: Matthais Toennesmann • DØ: me, Vishnu Z., Bob H. Cones can iteratate away from “small” Energy clusters • The Run I algorithm did this too... John Krane -- Iowa State University

  3. Modified Cone Algorithm CDF’s “search cones” • Use a small cone to find jets and iterate locations • Expand cone size to full 0.7 and save • Find midpoints found a phi-wrap bug; using pT-weight not 4vec? • Iterate 0.7 size midpoint jets John Krane -- Iowa State University

  4. I never found a lost jet, but they must exist... Results on selected sample (45 evts) Each point was a seed Seed tracking Plot shown in OK workshop Symmetric in y-f, so just use R... p11’ Abs f drift Abs y drift John Krane -- Iowa State University

  5. Drift distance for 0.7 cones, pT>15 GeV • If a seed is too close (R/2) to existing jet, ignore it • Standard cones can drift very long distances! • Search cone R/2 limits drift to R... John Krane -- Iowa State University

  6. R=0.5 Cones Same comments apply... John Krane -- Iowa State University

  7. R=0.3 cones Again... John Krane -- Iowa State University

  8. Normalize drift distances by R • R=0.5 cones,scaled distance John Krane -- Iowa State University

  9. x-axes have suppressed zero John Krane -- Iowa State University

  10. Conclusions • Cones can drift quite far from the seed, even for reasonably high-pT Jets >15 GeV • This doesn’t mean a jet is “lost” every time this happens (I have yet to find a lost jet) • Search cones can limit drift as much as we like • R/2 works well (almost perfectly) "R John Krane -- Iowa State University

  11. Suggestions for Future Work • Implement my rcp-driven code (but not necessarily a search cone setting just yet) • Search_Factor=1.0 means no search cone • Search_Factor=0.5 eventually... • Run full Reco tests for CPU time and consistency • Consult CDF and try to converge on a parameter • Informally, Joey Huston thinks R/2 works well • Would like permission to show this talk externally John Krane -- Iowa State University

  12. Files altered for Search Cone mod energycluster/ILConeAlgorithm.hpp(Constructor allows search_cone argument,midpoint calculation fixed for phi-wrap,is_stable() need not iterate,min jet pT reduced during search phase) calreco/CalClusterReco.cpp(Read and pass Search_Factor from rcp) calreco/rcp/CalILCone07.rcp calreco/rcp/CalPreSCILCone07.rcp calreco/rcp/CalPreSCILCone05.rcp calreco/rcp/CalPreSCILCone03.rcp John Krane -- Iowa State University

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