Statistical Techniques for Particle Physics

Europe/Paris
Auditorium (LAPP-Annecy)

Auditorium

LAPP-Annecy

LAPP - 9 Chemin de Bellevue - BP 110 F-74941 Annecy-le-Vieux CEDEX - FRANCE --Tel : (33) (0) 4 50 09 16 00 -- Fax : (33) (0) 4 50 27 94 95
Kyle Cranmer
Description
This series will consist of two 1.5 hour lectures on statistics for particle physics. The first lecture will begin with a review the basic principles of probability, some terminology, and the three main approaches towards statistical inference (Frequentist, Bayesian, and Likelihood-based). I will then outline the statistical basis for multivariate analysis techniques (the Neyman-Pearson lemma) and the motivation for machine learning algorithms. In the second lecture, I will extend simple hypothesis testing to the case in which the statistical model has one or many parameters (the Neyman Construction and the Feldman-Cousins technique) and outline techniques to incorporate background uncertainties. If time allows, I will briefly touch on the statistical challenges of searches for physics beyond the standard model and some ideas for the future.
    • 1
      Statistical Techniques for Particle Physics
      This series will consist of two 1.5 hour lectures on statistics for particle physics. The first lecture will begin with a review the basic principles of probability, some terminology, and the three main approaches towards statistical inference (Frequentist, Bayesian, and Likelihood-based). I will then outline the statistical basis for multivariate analysis techniques (the Neyman-Pearson lemma) and the motivation for machine learning algorithms. In the second lecture, I will extend simple hypothesis testing to the case in which the statistical model has one or many parameters (the Neyman Construction and the Feldman-Cousins technique) and outline techniques to incorporate background uncertainties. If time allows, I will briefly touch on the statistical challenges of searches for physics beyond the standard model and some ideas for the future.
      Slides
    • 2
      Statistical Techniques for Particle Physics
      This series will consist of two 1.5 hour lectures on statistics for particle physics. The first lecture will begin with a review the basic principles of probability, some terminology, and the three main approaches towards statistical inference (Frequentist, Bayesian, and Likelihood-based). I will then outline the statistical basis for multivariate analysis techniques (the Neyman-Pearson lemma) and the motivation for machine learning algorithms. In the second lecture, I will extend simple hypothesis testing to the case in which the statistical model has one or many parameters (the Neyman Construction and the Feldman-Cousins technique) and outline techniques to incorporate background uncertainties. If time allows, I will briefly touch on the statistical challenges of searches for physics beyond the standard model and some ideas for the future.