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2019:groups:tools:mlregression

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Machine Learning: Regression and classification

Aims:

  • Library of regression and classification networks
  • Keras/Tensorflow and Scikit-learn to start
  • Library of Training data, maybe connected to hep-data (database)

Train regression on the following:

  • electroweak cross-section in pMSSM19 (DeepXs, …)
  • cross sections Wprime, Zprime (how many dimensions?)
  • Doublet Higgs model (6 dim)

Train likelihoods:

  • global fits Gambit Xenoda data (train on likehoods on different observables, e.g. only colliderbit)
  • Higgs model with many nuisance parameters (100?)

Train on observables:

  • example relic density

Train on reconstruction efficiencies:

  • LLSps

(want to share code for the networks…)

Output:

  • git repositories for networks
  • Zenodo data
  • talk with hepdata
  • Les Houches paper for project
  • prototype code for the network library

Other info:

  • How to sample ? Depends on goal, proposed active learning etc.
2019/groups/tools/mlregression.1561219526.txt.gz · Last modified: 2019/06/22 18:05 by roberto.ruiz_de_austri