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Implementation:Scikit learn Scikit learn OptimizeUtils

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Knowledge Sources
Domains Machine Learning, Optimization
Last Updated 2026-02-08 15:00 GMT

Overview

Concrete utility module for Newton conjugate gradient optimization provided by scikit-learn.

Description

The optimize module provides scikit-learn's own implementation of the Newton conjugate gradient solver. Unlike scipy's version, it uses only one function call to retrieve the function value, gradient, and Hessian matrix-vector product, which provides significant speedups for expensive loss functions (e.g., logistic regression with large matrices). It also includes Wolfe line search and optimization result checking.

Usage

Use these functions when implementing custom loss functions that need efficient second-order optimization, or when checking the result of scipy optimization calls within scikit-learn estimators.

Code Reference

Source Location

Signature

class _LineSearchError(RuntimeError):
    ...

def _line_search_wolfe12(
    f, fprime, xk, pk, gfk, old_fval, old_old_fval, verbose=0, **kwargs
):
    ...

def _cg(fhess_p, fgrad, maxiter, tol, verbose=0):
    ...

def _newton_cg(
    grad_hess, func, grad, x0, args=(), tol=1e-4, maxiter=100,
    maxinner=200, line_search=True, warn=True, verbose=0
):
    ...

def _check_optimize_result(solver, result, max_iter=None, extra_warning_msg=None):
    ...

Import

from sklearn.utils.optimize import _newton_cg, _check_optimize_result

I/O Contract

Inputs

Name Type Required Description
grad_hess callable Yes Function returning gradient and Hessian-vector product callable
func callable Yes Objective function to minimize
grad callable Yes Gradient function
x0 ndarray Yes Initial parameter vector
tol float No Convergence tolerance
maxiter int No Maximum number of Newton iterations

Outputs

Name Type Description
xk ndarray Optimized parameter vector
n_iter int Number of iterations performed

Usage Examples

Basic Usage

from sklearn.utils.optimize import _check_optimize_result
import scipy.optimize

# Check a scipy optimization result
result = scipy.optimize.minimize(lambda x: x**2, x0=1.0, method="L-BFGS-B")
_check_optimize_result("lbfgs", result)

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