4.7 Article

HistFitter software framework for statistical data analysis

期刊

EUROPEAN PHYSICAL JOURNAL C
卷 75, 期 4, 页码 -

出版社

SPRINGER
DOI: 10.1140/epjc/s10052-015-3327-7

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资金

  1. CERN, Switzerland
  2. DFG cluster of excellence Origin and Structure of the Universe
  3. Natural Sciences and Engineering Research Council of Canada
  4. ATLAS-Canada Subatomic Physics Project Grant
  5. Department Of Energy of the United States of America
  6. National Science Foundation of the United States of America
  7. FOM the Netherlands
  8. NWO the Netherlands
  9. STFC, United Kingdom

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We present a software framework for statistical data analysis, called HistFitter, that has been used extensively by the ATLAS Collaboration to analyze big datasets originating from proton-proton collisions at the Large Hadron Collider at CERN. Since 2012 HistFitter has been the standard statistical tool in searches for supersymmetric particles performed by ATLAS. HistFitter is a programmable and flexible framework to build, book-keep, fit, interpret and present results of data models of nearly arbitrary complexity. Starting from an object-oriented configuration, defined by users, the framework builds probability density functions that are automatically fit to data and interpreted with statistical tests. Internally HistFitter uses the statistics packages RooStats and HistFactory. A key innovation of HistFitter is its design, which is rooted in analysis strategies of particle physics. The concepts of control, signal and validation regions are woven into its fabric. These are progressively treated with statistically rigorous built-in methods. Being capable of working with multiple models at once that describe the data, HistFitter introduces an additional level of abstraction that allows for easy bookkeeping, manipulation and testing of large collections of signal hypotheses. Finally, HistFitter provides a collection of tools to present results with publication quality style through a simple command-line interface.

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