peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/scipy
/odr
/__init__.py
""" | |
================================================= | |
Orthogonal distance regression (:mod:`scipy.odr`) | |
================================================= | |
.. currentmodule:: scipy.odr | |
Package Content | |
=============== | |
.. autosummary:: | |
:toctree: generated/ | |
Data -- The data to fit. | |
RealData -- Data with weights as actual std. dev.s and/or covariances. | |
Model -- Stores information about the function to be fit. | |
ODR -- Gathers all info & manages the main fitting routine. | |
Output -- Result from the fit. | |
odr -- Low-level function for ODR. | |
OdrWarning -- Warning about potential problems when running ODR. | |
OdrError -- Error exception. | |
OdrStop -- Stop exception. | |
polynomial -- Factory function for a general polynomial model. | |
exponential -- Exponential model | |
multilinear -- Arbitrary-dimensional linear model | |
unilinear -- Univariate linear model | |
quadratic -- Quadratic model | |
Usage information | |
================= | |
Introduction | |
------------ | |
Why Orthogonal Distance Regression (ODR)? Sometimes one has | |
measurement errors in the explanatory (a.k.a., "independent") | |
variable(s), not just the response (a.k.a., "dependent") variable(s). | |
Ordinary Least Squares (OLS) fitting procedures treat the data for | |
explanatory variables as fixed, i.e., not subject to error of any kind. | |
Furthermore, OLS procedures require that the response variables be an | |
explicit function of the explanatory variables; sometimes making the | |
equation explicit is impractical and/or introduces errors. ODR can | |
handle both of these cases with ease, and can even reduce to the OLS | |
case if that is sufficient for the problem. | |
ODRPACK is a FORTRAN-77 library for performing ODR with possibly | |
non-linear fitting functions. It uses a modified trust-region | |
Levenberg-Marquardt-type algorithm [1]_ to estimate the function | |
parameters. The fitting functions are provided by Python functions | |
operating on NumPy arrays. The required derivatives may be provided | |
by Python functions as well, or may be estimated numerically. ODRPACK | |
can do explicit or implicit ODR fits, or it can do OLS. Input and | |
output variables may be multidimensional. Weights can be provided to | |
account for different variances of the observations, and even | |
covariances between dimensions of the variables. | |
The `scipy.odr` package offers an object-oriented interface to | |
ODRPACK, in addition to the low-level `odr` function. | |
Additional background information about ODRPACK can be found in the | |
`ODRPACK User's Guide | |
<https://docs.scipy.org/doc/external/odrpack_guide.pdf>`_, reading | |
which is recommended. | |
Basic usage | |
----------- | |
1. Define the function you want to fit against.:: | |
def f(B, x): | |
'''Linear function y = m*x + b''' | |
# B is a vector of the parameters. | |
# x is an array of the current x values. | |
# x is in the same format as the x passed to Data or RealData. | |
# | |
# Return an array in the same format as y passed to Data or RealData. | |
return B[0]*x + B[1] | |
2. Create a Model.:: | |
linear = Model(f) | |
3. Create a Data or RealData instance.:: | |
mydata = Data(x, y, wd=1./power(sx,2), we=1./power(sy,2)) | |
or, when the actual covariances are known:: | |
mydata = RealData(x, y, sx=sx, sy=sy) | |
4. Instantiate ODR with your data, model and initial parameter estimate.:: | |
myodr = ODR(mydata, linear, beta0=[1., 2.]) | |
5. Run the fit.:: | |
myoutput = myodr.run() | |
6. Examine output.:: | |
myoutput.pprint() | |
References | |
---------- | |
.. [1] P. T. Boggs and J. E. Rogers, "Orthogonal Distance Regression," | |
in "Statistical analysis of measurement error models and | |
applications: proceedings of the AMS-IMS-SIAM joint summer research | |
conference held June 10-16, 1989," Contemporary Mathematics, | |
vol. 112, pg. 186, 1990. | |
""" | |
# version: 0.7 | |
# author: Robert Kern <[email protected]> | |
# date: 2006-09-21 | |
from ._odrpack import * | |
from ._models import * | |
from . import _add_newdocs | |
# Deprecated namespaces, to be removed in v2.0.0 | |
from . import models, odrpack | |
__all__ = [s for s in dir() | |
if not (s.startswith('_') or s in ('odr_stop', 'odr_error'))] | |
from scipy._lib._testutils import PytestTester | |
test = PytestTester(__name__) | |
del PytestTester | |