FakeFactor framework for the estimation of jets misidentified taus with pyROOT.
The environment can be set up with conda via
conda env create --file environment.yaml
This framework is designed for n-tuples produced with CROWN as input.
All information for the preselection step is defined in a configuration file in the configs/
folder.
The preselection config has the following parameters:
-
The expected input folder structure is NTUPLE_PATH/ERA/SAMPLE_TAG/CHANNEL/*.root
parameter type description ntuple_path
string
absolute path to the folder with the n-tuples on the dcache, a remote path is expected like "root://cmsxrootd-kit.gridka.de//store/user/USER/..." era
string
data taking era ("2018, "2017", "2016preVFP", "2016postVFP") channel
string
tau pair decay channels ("et", "mt", "tt") tree
string
name of the tree in the n-tuple files ("ntuple" in CROWN) analysis
string
analysis name, needed to get the output features which are saved/needed for the later steps e.g. "smhtt_ul"
-
The output folder structure is OUTPUT_PATH/preselection/ERA/CHANNEL/*.root
parameter type description output_path
string
absolute path where the files with the preselected events will be stored, a local path is expected like "/ceph/USER/..." -
In
processes
all the processes are defined that should be preprocessed.
The names are also used for the output file naming after the processing.
Each process needs two specifications:parameter type description tau_gen_modes
list
split of the events corresponding to the origin of the hadronic tau samples
list
list of all sample tags corresponding to the specific process The
tau_gen_modes
have following modes:parameter type description T
string
genuine tau J
string
jet misidentified as a tau L
string
lepton misidentified as a tau all
string
if no split should be performed -
In
event_selection
, parameter for all selections that should be applied are defined.
This is basically a dictionary of cuts where the key is the name of a cut and the value is the cut itself as a string e.g.had_tau_pt: "pt_2 > 30"
. The name of a cut is not really important, it is only used as an output information in the terminal. A cut can only use variables which are in the ntuples. -
In
mc_weights
all weights that should be applied for simulated samples are defined.
There are two types of weights.- Like for
event_selection
a weight can directly be specified and is then applied to all samples the same way e.g.lep_id: "id_wgt_mu_1"
- Some weights are either sample specific or need additional information. Currently implemented options are:
parameter type description generator
string
""
if a normal generator weight should be applied to all samples, if"stitching"
for DY+jets and W+jets a special stitching weights is appliedlumi
string
luminosity scaling, this depends on the era and uses the era
parameter of the config to get the correct weight, so basically it's not relevant what is in the stringZ_pt_reweight
string
reweighting of the Z boson pt, the weight in the ntuple is used and only applied to DY+jets Top_pt_reweight
string
reweighting of the top quark pt, the weight in the ntuple is used and only applied to ttbar
- Like for
-
In
emb_weights
all weights that should be applied for embedded samples are defined.
Like forevent_selection
a weight can directly be specified and is then applied to all samples the same way e.g.single_trigger: "trg_wgt_single_mu24ormu27"
Scale factors for b-tagging and tau ID vs jet are applied on the fly during the FF calculation step.
To run the preselection step, execute the python script and specify the config file (relative path possible):
python preselection.py --config-file PATH/CONFIG.yaml
In this step the fake factors are calculated. This should be run after the preselection step.
All information for the FF calculation step is defined in a configuration file in the configs/
folder.
The FF calculation config has the following parameters:
-
The expected input folder structure is FILE_PATH/preselection/ERA/CHANNEL/*.root
parameter type description file_path
string
absolute path to the folder with the preselected files era
string
data taking era ("2018, "2017", "2016preVFP", "2016postVFP") channel
string
tau pair decay channels ("et", "mt", "tt") tree
string
name of the tree in the preselected files (same as in preselection e.g. "ntuple") -
The output folder structure is workdir/WORKDIR_NAME/ERA/fake_factors/CHANNEL/outputfiles
parameter type description workdir_name
string
relative path where the output files will be stored -
General options for the calculation:
parameter type description use_embedding
bool
True if embedded sample should be used, False if only MC sample should be used -
In
target_processes
the processes for which FFs should be calculated (normally for QCD, Wjets, ttbar) are defined.
Each target process needs some specifications:parameter type description split_categories
dict
names of variables for the fake factor measurement in different phase space regions - the FF measurement can be split based on variables in 1D or 2D (1 or 2 variables)
- each category/variable has a
list
of orthogonal cuts (e.g. "njets" with "==1", ">=2") - implemented split variables are "njets", "nbtag" or "deltaR_ditaupair"
- at least one inclusive category needs to be specified
split_categories_binedges
dict
bin edge values for each split_categories
variable- number of bin edges should always be N(variable cuts)+1
SRlike_cuts
dict
event selections for the signal-like region of the target process ARlike_cuts
dict
event selections for the application-like region of the target process SR_cuts
dict
event selections for the signal region (normally only needed for ttbar) AR_cuts
dict
event selections for the application region (normally only needed for ttbar) var_dependence
string
variable the FF measurement should depend on (normally pt of the hadronic tau e.g. "pt_2"
)var_bins
list
bin edges for the variable specified in var_dependence
Event selections can be defined the same way as in the preselection step
event_selection
. Only the tau vs jet ID cut is special because the name should always behad_tau_id_vs_jet
(orhad_tau_id_vs_jet_*
in tt channel), this is needed to read out the working points from the cut string and apply the correct tau vs jet ID weights. -
In
process_fractions
specifications for the calculation of the process fractions are defined.parameter type description processes
list
sample names (from the preprocessing step) of the processes for which the fractions should be stored in the correctionlib json, the sum of fractions of the specified samples is 1. split_categories
dict
see target_processes
(only in 1D)AR_cuts
list
see target_processes
SR_cuts
list
see target_processes
, (optional) not needed for the fraction calculation
To run the FF calculation step, execute the python script and specify the config file (relative path possible):
python ff_calculation.py --config-file PATH/CONFIG.yaml
In this step the corrections for the fake factors are calculated. This should be run after the FF calculation step.
Currently two different correction types are implemented:
- non closure correction depending on a specific variable
- DR to SR interpolation correction depending on a specific variable
All information for the FF correction calculation step is defined in a configuration file in the configs/
folder. Additional information is loaded from the used config in the previous FF calculation step (this is done automatically).
The FF correction config has the following parameters:
-
The expected input folder structure is workdir/WORKDIR_NAME/ERA/fake_factors/CHANNEL/*
parameter type description workdir_name
string
the name of the work directory for which the corrections should be calculated (normally the same as in the FF calculation step) era
string
data taking era ("2018, "2017", "2016preVFP", "2016postVFP") channel
string
tau pair decay channels ("et", "mt", "tt") -
In
target_processes
the processes for which FF corrections should be calculated (normally for QCD, Wjets, ttbar) are defined.
Each target process needs some specifications:parameter type description non_closure
dict
one or two non closure corrections can be specified indicated by the variable the correction should be calculated for (e.g. leading_lep_pt
), if more than one correction is specified,leading_lep_pt
should come first (due to code specifics) because the second corrections is calculated with the first already appliedDR_SR
dict
this correction should be specified only once per process in target_processes
Each correction has following specifications:
parameter type description var_dependence
string
variable the FF correction measurement should depend on (e.g. "pt_1"
for "leading_lep_pt")var_bins
list
bin edges for the variable specified in var_dependence
SRlike_cuts
dict
event selections for the signal-like region of the target process that should be replaced compared to the selection used in the previous FF calculation step ARlike_cuts
dict
event selections for the application-like region of the target process that should be replaced compared to the selection used in the previous FF calculation step AR_SR_cuts
dict
event selections for a switch from the determination region to the signal/application region, this is only relevant for DR_SR
correctionsnon_closure
dict
this is only relevant for DR_SR
corrections, since for this corrections additional fake factors are calculated it's possible to calculated and apply non closure corrections to these fake factors before calculating the actual DR to SR correction
To run the FF correction step, execute the python script and specify the config file (relative path possible):
python ff_corrections.py --config-file PATH/CONFIG.yaml
An optional parameter is --only-main-corrections
. By using this parameter the precalculation step for the DR to SR corrections is skipped. This is helpful is the precalculations step is already done.
- check out
configs/general_definitions.py
, this file has many relevant definition for preselection, plotting or correctionlib output information - check
ntuple_path
andoutput_path
(preselection) orfile_path
andworkdir_name
(fake factors, corrections) in the used config files to avoid wrong inputs or outputs