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* 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.math3.optim.nonlinear.scalar;
import org.apache.commons.math3.analysis.MultivariateFunction;
import org.apache.commons.math3.exception.DimensionMismatchException;
import org.apache.commons.math3.exception.NumberIsTooSmallException;
import org.apache.commons.math3.util.FastMath;
import org.apache.commons.math3.util.MathUtils;
/**
* Adapter extending bounded {@link MultivariateFunction} to an unbouded
* domain using a penalty function.
*
*
* This adapter can be used to wrap functions subject to simple bounds on
* parameters so they can be used by optimizers that do not directly
* support simple bounds.
*
*
* The principle is that the user function that will be wrapped will see its
* parameters bounded as required, i.e when its {@code value} method is called
* with argument array {@code point}, the elements array will fulfill requirement
* {@code lower[i] <= point[i] <= upper[i]} for all i. Some of the components
* may be unbounded or bounded only on one side if the corresponding bound is
* set to an infinite value. The optimizer will not manage the user function by
* itself, but it will handle this adapter and it is this adapter that will take
* care the bounds are fulfilled. The adapter {@link #value(double[])} method will
* be called by the optimizer with unbound parameters, and the adapter will check
* if the parameters is within range or not. If it is in range, then the underlying
* user function will be called, and if it is not the value of a penalty function
* will be returned instead.
*
*
* This adapter is only a poor-man's solution to simple bounds optimization
* constraints that can be used with simple optimizers like
* {@link org.apache.commons.math3.optim.nonlinear.scalar.noderiv.SimplexOptimizer
* SimplexOptimizer}.
* A better solution is to use an optimizer that directly supports simple bounds like
* {@link org.apache.commons.math3.optim.nonlinear.scalar.noderiv.CMAESOptimizer
* CMAESOptimizer} or
* {@link org.apache.commons.math3.optim.nonlinear.scalar.noderiv.BOBYQAOptimizer
* BOBYQAOptimizer}.
* One caveat of this poor-man's solution is that if start point or start simplex
* is completely outside of the allowed range, only the penalty function is used,
* and the optimizer may converge without ever entering the range.
*
*
* @see MultivariateFunctionMappingAdapter
*
* @since 3.0
*/
public class MultivariateFunctionPenaltyAdapter
implements MultivariateFunction {
/** Underlying bounded function. */
private final MultivariateFunction bounded;
/** Lower bounds. */
private final double[] lower;
/** Upper bounds. */
private final double[] upper;
/** Penalty offset. */
private final double offset;
/** Penalty scales. */
private final double[] scale;
/**
* Simple constructor.
*
* When the optimizer provided points are out of range, the value of the
* penalty function will be used instead of the value of the underlying
* function. In order for this penalty to be effective in rejecting this
* point during the optimization process, the penalty function value should
* be defined with care. This value is computed as:
*
* penalty(point) = offset + ∑i[scale[i] * √|point[i]-boundary[i]|]
*
* where indices i correspond to all the components that violates their boundaries.
*
*
* So when attempting a function minimization, offset should be larger than
* the maximum expected value of the underlying function and scale components
* should all be positive. When attempting a function maximization, offset
* should be lesser than the minimum expected value of the underlying function
* and scale components should all be negative.
* minimization, and lesser than the minimum expected value of the underlying
* function when attempting maximization.
*
*
* These choices for the penalty function have two properties. First, all out
* of range points will return a function value that is worse than the value
* returned by any in range point. Second, the penalty is worse for large
* boundaries violation than for small violations, so the optimizer has an hint
* about the direction in which it should search for acceptable points.
*
* @param bounded bounded function
* @param lower lower bounds for each element of the input parameters array
* (some elements may be set to {@code Double.NEGATIVE_INFINITY} for
* unbounded values)
* @param upper upper bounds for each element of the input parameters array
* (some elements may be set to {@code Double.POSITIVE_INFINITY} for
* unbounded values)
* @param offset base offset of the penalty function
* @param scale scale of the penalty function
* @exception DimensionMismatchException if lower bounds, upper bounds and
* scales are not consistent, either according to dimension or to bounadary
* values
*/
public MultivariateFunctionPenaltyAdapter(final MultivariateFunction bounded,
final double[] lower, final double[] upper,
final double offset, final double[] scale) {
// safety checks
MathUtils.checkNotNull(lower);
MathUtils.checkNotNull(upper);
MathUtils.checkNotNull(scale);
if (lower.length != upper.length) {
throw new DimensionMismatchException(lower.length, upper.length);
}
if (lower.length != scale.length) {
throw new DimensionMismatchException(lower.length, scale.length);
}
for (int i = 0; i < lower.length; ++i) {
// note the following test is written in such a way it also fails for NaN
if (!(upper[i] >= lower[i])) {
throw new NumberIsTooSmallException(upper[i], lower[i], true);
}
}
this.bounded = bounded;
this.lower = lower.clone();
this.upper = upper.clone();
this.offset = offset;
this.scale = scale.clone();
}
/**
* Computes the underlying function value from an unbounded point.
*
* This method simply returns the value of the underlying function
* if the unbounded point already fulfills the bounds, and compute
* a replacement value using the offset and scale if bounds are
* violated, without calling the function at all.
*
* @param point unbounded point
* @return either underlying function value or penalty function value
*/
public double value(double[] point) {
for (int i = 0; i < scale.length; ++i) {
if ((point[i] < lower[i]) || (point[i] > upper[i])) {
// bound violation starting at this component
double sum = 0;
for (int j = i; j < scale.length; ++j) {
final double overshoot;
if (point[j] < lower[j]) {
overshoot = scale[j] * (lower[j] - point[j]);
} else if (point[j] > upper[j]) {
overshoot = scale[j] * (point[j] - upper[j]);
} else {
overshoot = 0;
}
sum += FastMath.sqrt(overshoot);
}
return offset + sum;
}
}
// all boundaries are fulfilled, we are in the expected
// domain of the underlying function
return bounded.value(point);
}
}