Terascale Statistics School 2024

Europe/Berlin
Seminarraum Flash (DESY Hamburg)

Seminarraum Flash

DESY Hamburg

28c
Andreas Hinzmann (CMS (CMS Fachgruppe Searches)), Dirk Kruecker (CMS (CMS Fachgruppe Searches)), Isabell Melzer-Pellmann (Deutsches Elektronen-Synchrotron DESY), Olaf Behnke (CMS (CMS Fachgruppe TOP))
Description

This is a course on statistical methods in particle physics mainly targeting PhD students but it is open to other interested students and post-docs. The school covers key analysis tasks in theory and practice as well as going deep with lectures into some specific areas of high relevance. 

It is expected that you bring your own laptop for the hands on sessions.
The school fee is 80 Euro. 

Find here a DESY map with the relevant school places

Organizing Committee:
I. Henning, A. Hinzmann, D. Kruecker, I. Melzer-Pellmann, O. Behnke

Terascale School Support
Participants
  • Alessandro Boschetti
  • Andrea Pareti
  • Anna Tegetmeier
  • Anna Vorländer
  • Asa Nehm
  • Asit Srivastava
  • Ben Cattermole
  • Benedikt Gocke
  • Can Suslu
  • Cloe Girard-Carillo
  • Cristina-Andreea Alexe
  • Emerson Bannister
  • Erik Bachmann
  • Filippo Cattafesta
  • Florian Harz
  • Glen Cowan
  • Ilias Tsaklidis
  • Ioana Caracas
  • Jess Lock
  • Katharina Lachner
  • Keila Moral Figueroa
  • Lara Markus
  • Lukas Kretschmann
  • Marijus Ambrozas
  • Martin Bartl
  • Mathis Frahm
  • Michael Windau
  • Nathan Prouvost
  • Nico Härringer
  • Nilima Akolkar
  • Olaf Behnke
  • Patrick Connor
  • Patrick Dougan
  • Paul Vaucelle
  • Raimundo Hoppe Elsholz
  • Roger Barlow
  • Sadia Marium
  • Saverio Monaco
  • Tatiana Selezneva
  • Tilman Plehn
  • Tim Frederik Beumker
  • Tommaso Cresta
  • Vincent Croft
  • +26
    • 10:00 11:00
      Registration 1h Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
    • 11:00 11:05
      Welcome 5m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
      Speakers: Isabell Melzer-Pellmann (Deutsches Elektronen-Synchrotron DESY), Olaf Behnke (CMS (CMS Fachgruppe TOP))
    • 11:05 12:30
      Statistical Inference Lecture 1 1h 25m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c

      Plan for Lectures 1 and 2:
      - Quick review of probability, frequentist vs. Bayesian approaches
      - Parameter estimation, maximum likelihood, asymptotic properties of MLEs
      - Hypothesis tests – general formalism, p-values
      - Confidence intervals from inversion of test, from likelihood function
      - General analysis including nuisance parameters, asymptotics

      Speaker: Glen Cowan (RHUL)
    • 12:30 14:00
      Lunch Break 1h 30m Canteen (DESY)

      Canteen

      DESY

    • 14:00 15:30
      Combine Tool Tutorial I 1h 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c

      Plan for Tutorial parts I - IV:
      In this tutorial we will go through the main features of the Combine software package which provides a command-line interface to many different statistical techniques, available inside RooFit/RooStats, that are used widely inside CMS.
      In the first part of the tutorial we’ll explain the format of the Combine configuration file (datacard), and then discuss how to set up a simple counting experiment, followed by the shape analysis setup using ROOT histograms as inputs. Then we’ll look at how to build simultaneous fits using independent categories, add systematic uncertainties and extract the limits or uncertainty estimates for the parameters of interest. Second part of the tutorial describes how to construct parametric models with RooFit and extract the measurements using Combine.

      Speakers: Aliya Nigamova (University of Hamburg), Kyle Cormier (Uni Zurich), Nicholas Wardle
    • 15:30 16:00
      Coffee Break 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
    • 16:00 17:30
      Combine Tool Tutorial II 1h 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
      Speakers: Aliya Nigamova (University of Hamburg), Kyle Cormier (Uni Zurich), Nicholas Wardle
    • 09:15 10:45
      Statistics for Machine Learning Lecture I 1h 30m Main Auditorium Bld 5 (DESY )

      Main Auditorium Bld 5

      DESY

      Plan for Lectures I - III:
      LHC Physics with its vast amount of data and its precise first-principle simulations is a perfect case for using modern machine learning techniques. This includes data acquisition, analysis, simulations, and inference. I will introduce the main ML-concepts and ML-tools in a physics-specific manner, with a focus on statistics aspects. I will start by introducing Bayesian neural networks and likelihood loss functions and show how we can train classification networks with a probabilistic output. I will then introduce a range of generative networks, which are transforming not only our daily lives but also LHC physics. Finally, I will discuss how these ML-methods enable unfolding or inverse simulations and optimal inference for the LHC and more broadly. While there will be no tutorial for this lecture, all students are encouraged to deepen their understanding using the tutorials which are provided with the lecture notes https://arxiv.org/abs/2211.01421 Updated lecture notes are here:
      https://www.thphys.uni-heidelberg.de/~plehn/pics/modern_ml.pdf

      Speaker: Tilman Plehn (Heidelberg University)
    • 10:45 11:15
      Coffee Break 30m Main Auditorium Bld 5 (DESY)

      Main Auditorium Bld 5

      DESY

    • 11:15 12:45
      Statistical Inference Lecture II 1h 30m Main Auditorium Bld 5 (DESY)

      Main Auditorium Bld 5

      DESY

      Speaker: Glen Cowan (RHUL)
    • 12:45 14:15
      Lunch Break 1h 30m Canteen (DESY)

      Canteen

      DESY

    • 14:15 15:30
      Combine Tool Tutorial III 1h 15m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
      Speakers: Aliya Nigamova (University of Hamburg), Kyle Cormier (Uni Zurich), Nicholas Wardle
    • 15:30 16:00
      Coffee Break 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
    • 16:00 17:30
      Combine Tool Tutorial IV 1h 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
      Speakers: Aliya Nigamova (University of Hamburg), Kyle Cormier (Uni Zurich), Nicholas Wardle
    • 18:30 20:30
      School Dinner 2h Canteen Extension 09a

      Canteen Extension 09a

      DESY Hamburg

    • 09:00 10:30
      Statistics for Machine Learning II 1h 30m Main Auditorium Bld 5 (DESY)

      Main Auditorium Bld 5

      DESY

      Speaker: Tilman Plehn (Heidelberg University)
    • 10:45 11:15
      Coffee Break 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
    • 11:15 12:45
      Unfolding Lecture 1h 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c

      In high-energy physics, unfolding is a critical statistical process for interpreting experimental data that is complicated by the intrinsic ill-posedness of the problem. This complexity arises from the need to provide heuristics for statistical estimates that disentangle true physical phenomena from observational distortions. We present a typical roadmap for why, when, and how unfolding is applied in high energy physics experiments and how the treatment of uncertainties influences considerations such as the choice of algorithm and regularisation.

      Speaker: Vincent Croft
    • 12:45 14:00
      Lunch Break 1h 15m Canteen (DESY)

      Canteen

      DESY

    • 14:00 15:30
      Special Session on Uncertainties: Introductory Lecture and Lecture on Treatment of Asymmetric Uncertainties 1h 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c

      What you mean by ‘the error on the result’, which is not as simple as you think.
      - Bayesian and frequentist probability and confidence.
      - The Neyman construction.
      - Statistical and systematic uncertainties
      - Asymmetric uncertainties and how to handle them

      Speaker: Roger Barlow (Huddersfield)
    • 15:30 16:00
      Coffee Break 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c
    • 16:00 17:30
      Special Session on Uncertainties: Lecture on Errors on Errors 1h 30m Seminarraum Flash

      Seminarraum Flash

      DESY Hamburg

      28c

      A statistical model is presented where the uncertainty in assignment of systematic errors is taken into account. Estimates of the systematic variances are modeled as gamma distributed variables. The resulting confidence intervals show interesting and useful properties, e.g., when averaging measurements to estimate their mean, the size of the confidence interval increases as a for decreasing goodness-of-fit, and averages have reduced sensitivity to outliers. The basic properties of the model are presented and several types of examples relevant for Particle Physics are explored. (Based on G. Cowan, Eur. Phys. J. C (2019) 79:133, E. Canonero et al., Eur. Phys. J. C (2023) 83:1100.)

      Speaker: Glen Cowan (RHUL)
    • 09:15 10:45
      Statistics of Machine Learning Lecture III 1h 30m Main Auditorium Bld 5 (DESY)

      Main Auditorium Bld 5

      DESY

      Speaker: Tilman Plehn (Heidelberg University)
    • 10:45 11:15
      Coffee Break + School Foto 30m Main Auditorium Bld 5 (DESY)

      Main Auditorium Bld 5

      DESY

    • 11:15 12:15
      School Summary 1h Main Auditorium Bld 5 (DESY)

      Main Auditorium Bld 5

      DESY

      Looking back, a reminder of what you’ve learned in the week and, looking forward, how you’re likely to use it.

      Speaker: Roger Barlow (Huddersfield)
    • 12:15 12:30
      Closing of School - Good Bye 15m Main Auditorium Bld 5 (DESY)

      Main Auditorium Bld 5

      DESY

      Speakers: Isabell Melzer-Pellmann (Deutsches Elektronen-Synchrotron DESY), Olaf Behnke (CMS (CMS Fachgruppe TOP))
    • 12:30 14:00
      Lunch Break 1h 30m Canteen (DESY)

      Canteen

      DESY