2,503 research outputs found
Bayesian Analysis
After making some general remarks, I consider two examples that illustrate
the use of Bayesian Probability Theory. The first is a simple one, the
physicist's favorite "toy," that provides a forum for a discussion of the key
conceptual issue of Bayesian analysis: the assignment of prior probabilities.
The other example illustrates the use of Bayesian ideas in the real world of
experimental physics.Comment: 14 pages, 5 figures, Workshop on Confidence Limits, CERN, 17-18
January, 200
Model Inference with Reference Priors
We describe the application of model inference based on reference priors to
two concrete examples in high energy physics: the determination of the CKM
matrix parameters rhobar and etabar and the determination of the parameters m_0
and m_1/2 in a simplified version of the CMSSM SUSY model. We show how a
1-dimensional reference posterior can be mapped to the n-dimensional (n-D)
parameter space of the given class of models, under a minimal set of conditions
on the n-D function. This reference-based function can be used as a prior for
the next iteration of inference, using Bayes' theorem recursively.Comment: Proceedings of PHYSTAT1
Strategy for discovering a low-mass Higgs boson at the Fermilab Tevatron
We have studied the potential of the CDF and DZero experiments to discover a
low-mass Standard Model Higgs boson, during Run II, via the processes
-> WH -> , -> ZH ->
and -> ZH ->. We
show that a multivariate analysis using neural networks, that exploits all the
information contained within a set of event variables, leads to a significant
reduction, with respect to {\em any} equivalent conventional analysis, in the
integrated luminosity required to find a Standard Model Higgs boson in the mass
range 90 GeV/c**2 < M_H < 130 GeV/c**2. The luminosity reduction is sufficient
to bring the discovery of the Higgs boson within reach of the Tevatron
experiments, given the anticipated integrated luminosities of Run II, whose
scope has recently been expanded.Comment: 26 pages, 8 figures, 7 tables, to appear in Physical Review D, Minor
fixes and revision
Optimizing Event Selection with the Random Grid Search
The random grid search (RGS) is a simple, but efficient, stochastic algorithm
to find optimal cuts that was developed in the context of the search for the
top quark at Fermilab in the mid-1990s. The algorithm, and associated code,
have been enhanced recently with the introduction of two new cut types, one of
which has been successfully used in searches for supersymmetry at the Large
Hadron Collider. The RGS optimization algorithm is described along with the
recent developments, which are illustrated with two examples from particle
physics. One explores the optimization of the selection of vector boson fusion
events in the four-lepton decay mode of the Higgs boson and the other optimizes
SUSY searches using boosted objects and the razor variables.Comment: 26 pages, 9 figure
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