scipy.optimize.approx_fprime¶
- scipy.optimize.approx_fprime(xk, f, epsilon, *args)[source]¶
- Finite-difference approximation of the gradient of a scalar function. - Parameters: - xk : array_like - The coordinate vector at which to determine the gradient of f. - f : callable - The function of which to determine the gradient (partial derivatives). Should take xk as first argument, other arguments to f can be supplied in *args. Should return a scalar, the value of the function at xk. - epsilon : array_like - Increment to xk to use for determining the function gradient. If a scalar, uses the same finite difference delta for all partial derivatives. If an array, should contain one value per element of xk. - *args : args, optional - Any other arguments that are to be passed to f. - Returns: - grad : ndarray - The partial derivatives of f to xk. - See also - check_grad
- Check correctness of gradient function against approx_fprime.
 - Notes - The function gradient is determined by the forward finite difference formula: - f(xk[i] + epsilon[i]) - f(xk[i]) f'[i] = --------------------------------- epsilon[i]- The main use of approx_fprime is in scalar function optimizers like fmin_bfgs, to determine numerically the Jacobian of a function. - Examples - >>> from scipy import optimize >>> def func(x, c0, c1): ... "Coordinate vector `x` should be an array of size two." ... return c0 * x[0]**2 + c1*x[1]**2 - >>> x = np.ones(2) >>> c0, c1 = (1, 200) >>> eps = np.sqrt(np.finfo(float).eps) >>> optimize.approx_fprime(x, func, [eps, np.sqrt(200) * eps], c0, c1) array([ 2. , 400.00004198]) 
