Fit
- class sherpa.fit.Fit(data, model, stat=None, method=None, estmethod=None, itermethod_opts=None)[source] [edit on github]
Bases:
NoNewAttributesAfterInitFit a model to a data set.
Changed in version 4.17.0: Changing the stat field now changes the internal IterFit object as well.
- Parameters:
data (
sherpa.data.Dataorsherpa.data.DataSimulFit) – The data to be fit.model (
sherpa.models.model.Modelorsherpa.models.model.SimulFitModel) – The model to fit to the data. It should match thedataparameter (i.e. be aSimulFitModelobject when data is aDataSimulFit).stat (
sherpa.stats.StatorNone, optional) – The statistic object to use. If not given thenChi2Gehrelsis used.method (
sherpa.optmethods.OptMethodinstance or None, optional) – The optimiser to use. If not given thensherpa.optmethods.LevMaris used.estmethod (
sherpa.estmethods.EstMethodor None, optional) – The class used to calculate errors. If not given thensherpa.estmethods.Covarianceis used.itermethod_opts (dict or None, optional) – If set, defines the iterated-fit method and options to use. It is passed through to
IterFit.
Attributes Summary
Return the statistic value
Methods Summary
Calculate the per-bin chi-squared statistic.
Calculate the statistic value.
Calculate the statistic value and related information.
est_errors([methoddict, parlist])Estimate errors.
fit([outfile, clobber, numcores])Fit the model to the data.
guess(**kwargs)Guess parameter values and limits.
simulfit(*others)Fit multiple data sets and models simultaneously.
Attributes Documentation
- stat
Return the statistic value
Methods Documentation
- calc_chisqr()[source] [edit on github]
Calculate the per-bin chi-squared statistic.
Evaluate the per-bin statistic for the current model and data settings (e.g. parameter values and data filters).
- Returns:
chisq – The chi-square value for each bin of the data, using the current statistic. A value of
Noneis returned if the statistic is not a chi-square distribution.- Return type:
array or None
See also
- calc_stat()[source] [edit on github]
Calculate the statistic value.
Evaluate the statistic for the current model and data settings (e.g. parameter values and data filters).
- Returns:
stat – The current statistic value.
- Return type:
number
See also
- calc_stat_info()[source] [edit on github]
Calculate the statistic value and related information.
Evaluate the statistic for the current model and data settings (e.g. parameter values and data filters).
- Returns:
statinfo – The current statistic value.
- Return type:
StatInfoResultsinstance
See also
- est_errors(methoddict=None, parlist=None)[source] [edit on github]
Estimate errors.
Calculate the low and high errors for one or more of the thawed parameters in the fit.
- Parameters:
methoddict (dict or None, optional) – A dictionary mapping from lower-cased method name to the associated optimisation method instance to use. This is only used if the method is changed, as described in the Notes section below.
parlist (sequence of
sherpa.models.parameter.Parameteror None, optional) – The names of the parameters for which the errors should be calculated. If set toNonethen all the thawed parameters are used.
- Returns:
res
- Return type:
- Raises:
sherpa.utils.err.EstErr – If any parameter in parlist is not valid (i.e. is not thawed or is not a member of the model expression being fit), or if the statistic is
LeastSq, or if the reduced chi-square value of the current parameter values is larger than themax_rstatoption (for chi-square statistics).
See also
Notes
If a new minimum is found for any parameter then the calculation is automatically started for all the parameters using this new best-fit location. This can repeat until the
maxfitsoption is reached.Unless the
Covarianceestimator is being used, or thefastoption is unset, then the method will be changed toNelderMead(for likelihood-based statistics) orLevMar(for chi-square based statistics) whilst calculating the errors.
- fit(outfile: str | Path | WriteableTextFile | None = None, clobber: bool = False, numcores: int | None = 1) FitResults[source] [edit on github]
Fit the model to the data.
Changed in version 4.17.0: The outfile parameter can now be sent a Path object or a file handle instead of a string.
- Parameters:
outfile (str, Path, IO object, or None, optional) – If not
Nonethen information on the fit is written to this file (as defined by a filename, path, or file handle).clobber (bool, optional) – Determines if the output file can be overwritten. This is only used when
outfileis a string orPathobject.numcores (int or None, optional) – The number of cores to use in fitting simultaneous data.
- Returns:
fitres
- Return type:
- Raises:
sherpa.utils.err.FitErr – This is raised if
clobberisFalseandoutfilealready exists or if all the bins have been masked out of the fit.
See also
Notes
The file created when
outfileis set is a simple ASCII file with a header line containing the text “# nfev statistic” and then a list of the thawed parameters, and then one line for each iteration, with the values separated by spaces. Ifoutfileis sent a file handle it is not closed by this routine.Examples
Fit a very-simple model (a constant value) to a small 1D dataset:
>>> from sherpa.data import Data1D >>> from sherpa.models.basic import Const1D >>> from sherpa.stats import LeastSq >>> d = Data1D("x", [-3, 5, 17, 22], [12, 3, 8, 5]) >>> m = Const1D() >>> s = LeastSq() >>> f = Fit(d, m, stat=s) >>> out = f.fit() >>> if not out.succeeded: print("Fit failed") >>> print(out.format()) Method = levmar Statistic = leastsq Initial fit statistic = 190 Final fit statistic = 46 at function evaluation 4 Data points = 4 Degrees of freedom = 3 Change in statistic = 144 const1d.c0 7 +/- 0.5
>>> print(m) const1d Param Type Value Min Max Units ----- ---- ----- --- --- ----- const1d.c0 thawed 7 -3.40282e+38 3.40282e+38
Repeat the fit, after resetting the model, so we can see how the optimiser searched the parameter space:
>>> from io import StringIO >>> m.reset() >>> optdata = StringIO() >>> out2 = f.fit(outfile=optdata) >>> print(optdata.getvalue()) # nfev statistic const1d.c0 0.000000e+00 1.900000e+02 1.000000e+00 1.000000e+00 1.900000e+02 1.000000e+00 2.000000e+00 1.899834e+02 1.000345e+00 3.000000e+00 4.600000e+01 7.000000e+00 4.000000e+00 4.600002e+01 7.002417e+00 5.000000e+00 4.600000e+01 7.000000e+00
- guess(**kwargs)[source] [edit on github]
Guess parameter values and limits.
The model’s
sherpa.models.model.Model.guessmethod is called with the data values (the dependent axis of the data set) and thekwargsarguments.
- simulfit(*others)[source] [edit on github]
Fit multiple data sets and models simultaneously.
The current fit object is combined with the other fit objects and a simultaneous fit is made, using the object’s statistic and optimisation method.
- Parameters:
*others (
sherpa.fit.Fitinstances) – Thedataandmodelattributes of these arguments are used, along with those from the object.- Returns:
fitres
- Return type:
See also