diff --git a/pyerrors/fits.py b/pyerrors/fits.py index da8c8ff6..d98f7aa0 100644 --- a/pyerrors/fits.py +++ b/pyerrors/fits.py @@ -151,7 +151,6 @@ def least_squares(x, y, func, priors=None, silent=False, **kwargs): For details about how the covariance matrix is estimated see `pyerrors.obs.covariance`. In practice the correlation matrix is Cholesky decomposed and inverted (instead of the covariance matrix). This procedure should be numerically more stable as the correlation matrix is typically better conditioned (Jacobi preconditioning). - At the moment this option only works for `prior==None` and when no `method` is given. expected_chisquare : bool If True estimates the expected chisquare which is corrected by effects caused by correlated input data (default False).