Use non-linear least squares to fit a function, f, to data.
Assumes ydata=f(xdata,*params)+eps.
Parameters:
fcallable
The model function, f(x, ...). It must take the independent
variable as the first argument and the parameters to fit as
separate remaining arguments.
xdataarray_like
The independent variable where the data is measured.
Should usually be an M-length sequence or an (k,M)-shaped array for
functions with k predictors, and each element should be float
convertible if it is an array like object.
ydataarray_like
The dependent data, a length M array - nominally f(xdata,...).
p0array_like, optional
Initial guess for the parameters (length N). If None, then the
initial values will all be 1 (if the number of parameters for the
function can be determined using introspection, otherwise a
ValueError is raised).
sigmaNone or scalar or M-length sequence or MxM array, optional
Determines the uncertainty in ydata. If we define residuals as
r=ydata-f(xdata,*popt), then the interpretation of sigma
depends on its number of dimensions:
A scalar or 1-D sigma should contain values of standard deviations of
errors in ydata. In this case, the optimized function is
chisq=sum((r/sigma)**2).
A 2-D sigma should contain the covariance matrix of
errors in ydata. In this case, the optimized function is
chisq=r.T@inv(sigma)@r.
Added in version 0.19.
None (default) is equivalent of 1-D sigma filled with ones.
absolute_sigmabool, optional
If True, sigma is used in an absolute sense and the estimated parameter
covariance pcov reflects these absolute values.
If False (default), only the relative magnitudes of the sigma values matter.
The returned parameter covariance matrix pcov is based on scaling
sigma by a constant factor. This constant is set by demanding that the
reduced chisq for the optimal parameters popt when using the
scaledsigma equals unity. In other words, sigma is scaled to
match the sample variance of the residuals after the fit. Default is False.
Mathematically,
pcov(absolute_sigma=False)=pcov(absolute_sigma=True)*chisq(popt)/(M-N)
check_finitebool, optional
If True, check that the input arrays do not contain nans of infs,
and raise a ValueError if they do. Setting this parameter to
False may silently produce nonsensical results if the input arrays
do contain nans. Default is True if nan_policy is not specified
explicitly and False otherwise.
2-tuple of array_like: Each element of the tuple must be either
an array with the length equal to the number of parameters, or a
scalar (in which case the bound is taken to be the same for all
parameters). Use np.inf with an appropriate sign to disable
bounds on all or some parameters.
method{‘lm’, ‘trf’, ‘dogbox’}, optional
Method to use for optimization. See least_squares for more details.
Default is ‘lm’ for unconstrained problems and ‘trf’ if bounds are
provided. The method ‘lm’ won’t work when the number of observations
is less than the number of variables, use ‘trf’ or ‘dogbox’ in this
case.
Added in version 0.17.
jaccallable, string or None, optional
Function with signature jac(x,...) which computes the Jacobian
matrix of the model function with respect to parameters as a dense
array_like structure. It will be scaled according to provided sigma.
If None (default), the Jacobian will be estimated numerically.
String keywords for ‘trf’ and ‘dogbox’ methods can be used to select
a finite difference scheme, see least_squares.
Added in version 0.18.
full_outputboolean, optional
If True, this function returns additional information: infodict,
mesg, and ier.
Added in version 1.9.
nan_policy{‘raise’, ‘omit’, None}, optional
Defines how to handle when input contains nan.
The following options are available (default is None):
‘raise’: throws an error
‘omit’: performs the calculations ignoring nan values
None: no special handling of NaNs is performed
(except what is done by check_finite); the behavior when NaNs
are present is implementation-dependent and may change.
Note that if this value is specified explicitly (not None),
check_finite will be set as False.
Optimal values for the parameters so that the sum of the squared
residuals of f(xdata,*popt)-ydata is minimized.
pcov2-D array
The estimated approximate covariance of popt. The diagonals provide
the variance of the parameter estimate. To compute one standard
deviation errors on the parameters, use
perr=np.sqrt(np.diag(pcov)). Note that the relationship between
cov and parameter error estimates is derived based on a linear
approximation to the model function around the optimum [1].
When this approximation becomes inaccurate, cov may not provide an
accurate measure of uncertainty.
How the sigma parameter affects the estimated covariance
depends on absolute_sigma argument, as described above.
If the Jacobian matrix at the solution doesn’t have a full rank, then
‘lm’ method returns a matrix filled with np.inf, on the other hand
‘trf’ and ‘dogbox’ methods use Moore-Penrose pseudoinverse to compute
the covariance matrix. Covariance matrices with large condition numbers
(e.g. computed with numpy.linalg.cond) may indicate that results are
unreliable.
infodictdict (returned only if full_output is True)
a dictionary of optional outputs with the keys:
nfev
The number of function calls. Methods ‘trf’ and ‘dogbox’ do not
count function calls for numerical Jacobian approximation,
as opposed to ‘lm’ method.
fvec
The residual values evaluated at the solution, for a 1-D sigma
this is (f(x,*popt)-ydata)/sigma.
fjac
A permutation of the R matrix of a QR
factorization of the final approximate
Jacobian matrix, stored column wise.
Together with ipvt, the covariance of the
estimate can be approximated.
Method ‘lm’ only provides this information.
ipvt
An integer array of length N which defines
a permutation matrix, p, such that
fjac*p = q*r, where r is upper triangular
with diagonal elements of nonincreasing
magnitude. Column j of p is column ipvt(j)
of the identity matrix.
Method ‘lm’ only provides this information.
qtf
The vector (transpose(q) * fvec).
Method ‘lm’ only provides this information.
Added in version 1.9.
mesgstr (returned only if full_output is True)
A string message giving information about the solution.
Added in version 1.9.
ierint (returned only if full_output is True)
An integer flag. If it is equal to 1, 2, 3 or 4, the solution was
found. Otherwise, the solution was not found. In either case, the
optional output variable mesg gives more information.
Added in version 1.9.
Raises:
ValueError
if either ydata or xdata contain NaNs, or if incompatible options
are used.
RuntimeError
if the least-squares minimization fails.
OptimizeWarning
if covariance of the parameters can not be estimated.
Calculate a linear least squares regression for two sets of measurements.
Notes
Users should ensure that inputs xdata, ydata, and the output of f
are float64, or else the optimization may return incorrect results.
With method='lm', the algorithm uses the Levenberg-Marquardt algorithm
through leastsq. Note that this algorithm can only deal with
unconstrained problems.
Box constraints can be handled by methods ‘trf’ and ‘dogbox’. Refer to
the docstring of least_squares for more information.
Parameters to be fitted must have similar scale. Differences of multiple
orders of magnitude can lead to incorrect results. For the ‘trf’ and
‘dogbox’ methods, the x_scale keyword argument can be used to scale
the parameters.
curve_fit is for local optimization of parameters to minimize the sum of squares
of residuals. For global optimization, other choices of objective function, and
other advanced features, consider using SciPy’s Global optimization
tools or the LMFIT package.
K. Vugrin et al. Confidence region estimation techniques for nonlinear
regression in groundwater flow: Three case studies. Water Resources
Research, Vol. 43, W03423, DOI:10.1029/2005WR004804
For reliable results, the model func should not be overparametrized;
redundant parameters can cause unreliable covariance matrices and, in some
cases, poorer quality fits. As a quick check of whether the model may be
overparameterized, calculate the condition number of the covariance matrix:
>>> np.linalg.cond(pcov)34.571092161547405 # may vary
The value is small, so it does not raise much concern. If, however, we were
to add a fourth parameter d to func with the same effect as a:
>>> deffunc2(x,a,b,c,d):... returna*d*np.exp(-b*x)+c# a and d are redundant>>> popt,pcov=curve_fit(func2,xdata,ydata)>>> np.linalg.cond(pcov)1.13250718925596e+32 # may vary
Such a large value is cause for concern. The diagonal elements of the
covariance matrix, which is related to uncertainty of the fit, gives more
information:
>>> np.diag(pcov)array([1.48814742e+29, 3.78596560e-02, 5.39253738e-03, 2.76417220e+28]) # may vary
Note that the first and last terms are much larger than the other elements,
suggesting that the optimal values of these parameters are ambiguous and
that only one of these parameters is needed in the model.
If the optimal parameters of f differ by multiple orders of magnitude, the
resulting fit can be inaccurate. Sometimes, curve_fit can fail to find any
results:
>>> ydata=func(xdata,500000,0.01,15)>>> try:... popt,pcov=curve_fit(func,xdata,ydata,method='trf')... exceptRuntimeErrorase:... print(e)Optimal parameters not found: The maximum number of function evaluations isexceeded.
If parameter scale is roughly known beforehand, it can be defined in
x_scale argument: