import { Matrix } from 'ml-matrix'; import type { Data2D, ParameterizedFunction } from './types.ts'; /** * Iteration for Levenberg-Marquardt * * @param data - Array of points to fit in the format [x1, x2, ... ], [y1, y2, ... ] * @param params - Array of previous parameter values * @param damping - Levenberg-Marquardt parameter * @param gradientDifference - The step size to approximate the jacobian matrix * @param centralDifference - If true the jacobian matrix is approximated by central differences otherwise by forward differences * @param parameterizedFunction - The parameters and returns a function with the independent variable as a parameter * @param weights - scale the gradient and residual error by weights */ export default function step(data: Data2D, params: number[], damping: number, gradientDifference: number[], parameterizedFunction: ParameterizedFunction, centralDifference: boolean, weights?: ArrayLike): { perturbations: Matrix; jacobianWeightResidualError: Matrix; }; //# sourceMappingURL=step.d.ts.map