mirror of https://github.com/davisking/dlib.git
192 lines
7.4 KiB
C++
Executable File
192 lines
7.4 KiB
C++
Executable File
/*
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This is an example illustrating the use the optimization
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routines from the dlib C++ Library.
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The library provides implementations of the conjugate gradient and
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quasi-newton BFGS optimization algorithms. Both of these algorithms
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allow you to find the minimum of a function of many input variables.
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This example walks though a few of the ways you might put these
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routines to use.
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*/
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#include "dlib/optimization.h"
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#include <iostream>
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using namespace std;
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using namespace dlib;
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// ----------------------------------------------------------------------------------------
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// Here we just make a typedef for a variable length column vector of doubles.
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typedef matrix<double,0,1> column_vector;
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// ----------------------------------------------------------------------------------------
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// Below we create a few functions. When you get down into main() you will see that
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// we can use the optimization algorithms to find the minimums of these functions.
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// ----------------------------------------------------------------------------------------
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double rosen ( const column_vector& m)
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/*
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This function computes what is known as Rosenbrock's function. It is
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a function of two input variables and has a global minimum at (1,1).
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So when we use this function to test out the optimization algorithms
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we will see that the minimum found is indeed at the point (1,1).
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*/
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{
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const double x = m(0);
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const double y = m(1);
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// compute Rosenbrock's function and return the result
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return 100.0*pow(y - x*x,2) + pow(1 - x,2);
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}
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// This is a helper function used while optimizing the rosen() function.
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const column_vector rosen_derivative ( const column_vector& m)
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/*!
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ensures
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- returns the gradient vector for the rosen function
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!*/
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{
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const double x = m(0);
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const double y = m(1);
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// make us a column vector of length 2
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column_vector res(2);
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// now compute the gradient vector
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res(0) = -400*x*(y-x*x) - 2*(1-x); // derivative of rosen() with respect to x
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res(1) = 200*(y-x*x); // derivative of rosen() with respect to y
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return res;
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}
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// ----------------------------------------------------------------------------------------
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class test_function
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{
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/*
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This object is an example of what is known as a "function object" in C++.
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It is simply an object with an overloaded operator(). This means it can
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be used in a way that is similar to a normal C function. The interesting
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thing about this sort of function is that it can have state.
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In this example, our test_function object contains a column_vector
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as its state and it computes the mean squared error between this
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stored column_vector and the arguments to its operator() function.
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This is a very simple function. However, in general you could compute
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any function you wanted here. An example of a typical use would be
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to find the parameters to some regression function that minimized
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the mean squared error on a set of data. In this case the arguments
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to the operator() function would be the parameters of your regression
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function and you would use those parameters to loop over all your data
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samples, compute the output of the regression function given those
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parameters, and finally return a measure of the error. The dlib
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optimization functions would then be used to find the parameters that
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minimized the error.
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*/
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public:
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test_function (
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const column_vector& input
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)
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{
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target = input;
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}
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double operator() ( const column_vector& arg) const
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{
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// return the mean squared error between the target vector and the input vector
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return mean(squared(target-arg));
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}
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private:
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column_vector target;
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};
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// ----------------------------------------------------------------------------------------
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int main()
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{
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// make a column vector of length 2
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column_vector starting_point;
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starting_point.set_size(2);
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cout << "Find the minimum of the rosen function()" << endl;
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// Set the starting point to (4,8). This is the point the optimization algorithm
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// will start out from and it will slowly move it closer and closer to the
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// function's minimum point
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starting_point = 4, 8;
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// Now we use the quasi newton algorithm to find the minimum point. The first argument
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// to this routine is the function we wish to minimize, the second is the
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// derivative of that function, the third is the starting point, and the last is
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// an acceptable minimum value of the rosen() function. That is, if the algorithm
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// finds any inputs to rosen() that gives an output value <= -1 then it will
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// stop immediately. Usually you supply a number smaller than the actual
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// global minimum. So since the smallest output of the rosen function is 0
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// we just put -1 here which effectively causes this last argument to be disregarded.
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find_min_quasi_newton(&rosen, &rosen_derivative, starting_point, -1);
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// Once the function ends the starting_point vector will contain the optimum point
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// of (1,1).
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cout << starting_point << endl;
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// Now lets try doing it again with a different starting point and the version
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// of the quasi newton algorithm that doesn't require you to supply
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// a derivative function. This version will compute a numerical approximation
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// of the derivative since we didn't supply one to it.
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starting_point = -94, 5.2;
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find_min_quasi_newton2(&rosen, starting_point, -1);
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// Again the correct minimum point is found and stored in starting_point
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cout << starting_point << endl;
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// Here we repeat the same thing as above but this time using the conjugate
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// gradient algorithm. As a rule of thumb, the quasi newton algorithm is
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// a better algorithm. However, it uses O(N^2) memory where N is the size
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// of the starting_point vector. The conjugate gradient algorithm however
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// uses only O(N) memory. So if you have a function of a huge number
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// of variables the conjugate gradient algorithm is often a better choice.
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starting_point = 4, 8;
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find_min_conjugate_gradient(&rosen, &rosen_derivative, starting_point, -1);
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cout << starting_point << endl;
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starting_point = -94, 5.2;
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find_min_conjugate_gradient2(&rosen, starting_point, -1);
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cout << starting_point << endl;
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// Now lets look at using the test_function object with the optimization
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// functions.
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cout << "\nFind the minimum of the test_function" << endl;
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column_vector target;
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target.set_size(4);
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starting_point.set_size(4);
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// This variable will be used as the target of the test_function. So,
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// our simple test_function object will have a global minimum at the
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// point given by the target. We will then use the optimization
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// routines to find this minimum value.
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target = 3, 5, 1, 7;
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// set the starting point far from the global minimum
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starting_point = 1,2,3,4;
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find_min_quasi_newton2(test_function(target), starting_point, -1);
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// At this point the correct value of (3,6,1,7) should be found and stored in starting_point
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cout << starting_point << endl;
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// Now lets try it again with the conjugate gradient algorithm.
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starting_point = -4,5,99,3;
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find_min_conjugate_gradient2(test_function(target), starting_point, -1);
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cout << starting_point << endl;
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}
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