iq_readout.classifiers.TwoStateLinearClassifier#
- class TwoStateLinearClassifier(params)[source]#
Template for creating two-state linear classifiers.
The elements to be rewritten for each specific classifier are:
_pdf_func_..., which specify the PDFs_pdf_func_..._proj, which specify the PDFs for the projected data_param_names, which specify the parameter names of the PDFs_param_names_proj, which specify the parameter names of the PDFs for the projected data.statistics, which computes the relevant statisticsfit, which performs the fit
NB: if the classifier does not use max-likelihood classification, then
predictneeds to the overwritten.- __init__(params)[source]#
Loads params to this
TwoStateLinearClassifier.- Parameters:
- params
The structure of the dictionary must be
{ 0: {"param1": float, ...}, 1: {"param1": float, ...} }
Methods
fit(shots_0, shots_1, **kargs)Runs fit to the given data.
from_yaml(filename)Load the TwoStateClassifier from YAML file.
pdf_0(z)Returns \(p(z|0)\).
pdf_0_projected(z_proj)Returns \(p_{proj}(z_{proj}|0)\).
pdf_1(z)Returns \(p(z|1)\).
pdf_1_projected(z_proj)Returns \(p_{proj}(z_{proj}|1)\).
predict(z[, p_0])Classifies the given data to 0 or 1 using maximum-likelihood classification, which is defined by
project(z)Returns the projection of the given IQ data to the \(\mu_0 - \mu_1\) axis.
to_yaml(filename)Stores parameters in a YAML file.
Attributes
Returns the parameters required to set up the classifier.
Returns the parameters for the projected PDFs, computed from
params.Returns dictionary with general statistical data: