New features: New madminer.likelihood class will let the user define more powerful likelihood functions, construct a profile likelihood, and fit with more flexibility. Documentation: Updated tutorial notebooks
New features: Automatic shuffling of MadMiner HDF5 files after reading in LHE or Delphes files Bug...
MadMiner is a python based tool that implements state-of-the-art simulation-based inference strategi...
New features: ParameterizedRatioEstimator now optionally rescales parameters (theta) to zero mean a...
New features: Morphing-aware likelihood ratio estimators. See https://arxiv.org/abs/1805.00020 for ...
New features: New Fisher information geometry functionality in the madminer.fisherinformation.Infor...
New features: AsymptoticLimits now supports the SALLINO method, estimating the likelihood with one-...
New features: Clean separation between training and validation events: the SampleAugmenter function...
New features: Expanded systematics system. Users now declare systematics with MadMiner.add_systemat...
New features: New keyword order in MadMiner.run(), which can be set to 'nlo' to set the systematics...
New features: New CI workflow step, lint, to ensure notebooks style consistency https://github.com/...
New features: Prototype implementation of joint score computations with finite differences (with Ma...
New features: Nuisance parameters to model systematic uncertainties, currently only from PDF / scal...
New features: More observables for LHEReader.add_observable: Users can use "p_truth" to access part...
New features: Dropout support Many more activation functions Number of workers for data loading can...
New features: Nuisance parameters for ratio-based methods! This required a major refactoring of mad...
New features: Automatic shuffling of MadMiner HDF5 files after reading in LHE or Delphes files Bug...
MadMiner is a python based tool that implements state-of-the-art simulation-based inference strategi...
New features: ParameterizedRatioEstimator now optionally rescales parameters (theta) to zero mean a...
New features: Morphing-aware likelihood ratio estimators. See https://arxiv.org/abs/1805.00020 for ...
New features: New Fisher information geometry functionality in the madminer.fisherinformation.Infor...
New features: AsymptoticLimits now supports the SALLINO method, estimating the likelihood with one-...
New features: Clean separation between training and validation events: the SampleAugmenter function...
New features: Expanded systematics system. Users now declare systematics with MadMiner.add_systemat...
New features: New keyword order in MadMiner.run(), which can be set to 'nlo' to set the systematics...
New features: New CI workflow step, lint, to ensure notebooks style consistency https://github.com/...
New features: Prototype implementation of joint score computations with finite differences (with Ma...
New features: Nuisance parameters to model systematic uncertainties, currently only from PDF / scal...
New features: More observables for LHEReader.add_observable: Users can use "p_truth" to access part...
New features: Dropout support Many more activation functions Number of workers for data loading can...
New features: Nuisance parameters for ratio-based methods! This required a major refactoring of mad...
New features: Automatic shuffling of MadMiner HDF5 files after reading in LHE or Delphes files Bug...
MadMiner is a python based tool that implements state-of-the-art simulation-based inference strategi...
New features: ParameterizedRatioEstimator now optionally rescales parameters (theta) to zero mean a...