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The functions described in this section can be used to perform
least-squares fits to a straight line model, @math{Y = c_0 + c_1 X}.
For weighted data the best-fit is found by minimizing the weighted sum of
squared residuals, @math{\chi^2},
for the parameters @math{c_0}, @math{c_1}. For unweighted data the
sum is computed with @math{w_i = 1}.
- Function: int gsl_fit_linear (const double * x, const size_t xstride, const double * y, const size_t ystride, size_t n, double * c0, double * c1, double * cov00, double * cov01, double * cov11, double * sumsq)
-
This function computes the best-fit linear regression coefficients
(c0,c1) of the model @math{Y = c_0 + c_1 X} for the datasets
(x, y), two vectors of length n with strides
xstride and ystride. The variance-covariance matrix for the
parameters (c0, c1) is estimated from the scatter of the
points around the best-fit line and returned via the parameters
(cov00, cov01, cov11). The sum of squares of the
residuals from the best-fit line is returned in sumsq.
- Function: int gsl_fit_wlinear (const double * x, const size_t xstride, const double * w, const size_t wstride, const double * y, const size_t ystride, size_t n, double * c0, double * c1, double * cov00, double * cov01, double * cov11, double * chisq)
-
This function computes the best-fit linear regression coefficients
(c0,c1) of the model @math{Y = c_0 + c_1 X} for the weighted
datasets (x, y), two vectors of length n with strides
xstride and ystride. The vector w, of length n
and stride wstride, specifies the weight of each datapoint. The
weight is the reciprocal of the variance for each datapoint in y.
The covariance matrix for the parameters (c0, c1) is
estimated from weighted data and returned via the parameters
(cov00, cov01, cov11). The weighted sum of squares of
the residuals from the best-fit line, @math{\chi^2}, is returned in
chisq.
- Function: int gsl_fit_linear_est (double x, double c0, double c1, double c00, double c01, double c11, double *y, double *y_err)
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This function uses the best-fit linear regression coefficients
c0,c1 and their estimated covariance
cov00,cov01,cov11 to compute the fitted function
y and its standard deviation y_err for the model @math{Y =
c_0 + c_1 X} at the point x.
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