/* * Licensed to the Apache Software Foundation (ASF) under one or more * contributor license agreements. See the NOTICE file distributed with * this work for additional information regarding copyright ownership. * The ASF licenses this file to You under the Apache License, Version 2.0 * (the "License"); you may not use this file except in compliance with * the License. You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ package org.apache.commons.math.optimization; import org.apache.commons.math.analysis.DifferentiableMultivariateVectorialFunction; import org.apache.commons.math.FunctionEvaluationException; /** * This interface represents an optimization algorithm for {@link DifferentiableMultivariateVectorialFunction * vectorial differentiable objective functions}. * <p>Optimization algorithms find the input point set that either {@link GoalType * maximize or minimize} an objective function.</p> * @see MultivariateRealOptimizer * @see DifferentiableMultivariateRealOptimizer * @version $Revision: 1073158 $ $Date: 2011-02-21 22:46:52 +0100 (lun. 21 févr. 2011) $ * @since 2.0 */ public interface DifferentiableMultivariateVectorialOptimizer { /** Set the maximal number of iterations of the algorithm. * @param maxIterations maximal number of function calls * . */ void setMaxIterations(int maxIterations); /** Get the maximal number of iterations of the algorithm. * @return maximal number of iterations */ int getMaxIterations(); /** Get the number of iterations realized by the algorithm. * @return number of iterations */ int getIterations(); /** Set the maximal number of functions evaluations. * @param maxEvaluations maximal number of function evaluations */ void setMaxEvaluations(int maxEvaluations); /** Get the maximal number of functions evaluations. * @return maximal number of functions evaluations */ int getMaxEvaluations(); /** Get the number of evaluations of the objective function. * <p> * The number of evaluation correspond to the last call to the * {@link #optimize(DifferentiableMultivariateVectorialFunction, * double[], double[], double[]) optimize} method. It is 0 if * the method has not been called yet. * </p> * @return number of evaluations of the objective function */ int getEvaluations(); /** Get the number of evaluations of the objective function jacobian . * <p> * The number of evaluation correspond to the last call to the * {@link #optimize(DifferentiableMultivariateVectorialFunction, * double[], double[], double[]) optimize} method. It is 0 if * the method has not been called yet. * </p> * @return number of evaluations of the objective function jacobian */ int getJacobianEvaluations(); /** Set the convergence checker. * @param checker object to use to check for convergence */ void setConvergenceChecker(VectorialConvergenceChecker checker); /** Get the convergence checker. * @return object used to check for convergence */ VectorialConvergenceChecker getConvergenceChecker(); /** Optimizes an objective function. * <p> * Optimization is considered to be a weighted least-squares minimization. * The cost function to be minimized is * ∑weight<sub>i</sub>(objective<sub>i</sub>-target<sub>i</sub>)<sup>2</sup> * </p> * @param f objective function * @param target target value for the objective functions at optimum * @param weights weight for the least squares cost computation * @param startPoint the start point for optimization * @return the point/value pair giving the optimal value for objective function * @exception FunctionEvaluationException if the objective function throws one during * the search * @exception OptimizationException if the algorithm failed to converge * @exception IllegalArgumentException if the start point dimension is wrong */ VectorialPointValuePair optimize(DifferentiableMultivariateVectorialFunction f, double[] target, double[] weights, double[] startPoint) throws FunctionEvaluationException, OptimizationException, IllegalArgumentException; }