// The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt /* This is an example illustrating the use the general purpose non-linear optimization routines from the dlib C++ Library. The library provides implementations of many popular algorithms such as L-BFGS and BOBYQA. These algorithms allow you to find the minimum or maximum of a function of many input variables. This example walks though a few of the ways you might put these routines to use. */ #include #include #include using namespace std; using namespace dlib; // ---------------------------------------------------------------------------------------- // In dlib, most of the general purpose solvers optimize functions that take a // column vector as input and return a double. So here we make a typedef for a // variable length column vector of doubles. This is the type we will use to // represent the input to our objective functions which we will be minimizing. typedef matrix column_vector; // ---------------------------------------------------------------------------------------- // Below we create a few functions. When you get down into main() you will see that // we can use the optimization algorithms to find the minimums of these functions. // ---------------------------------------------------------------------------------------- double rosen (const column_vector& m) /* This function computes what is known as Rosenbrock's function. It is a function of two input variables and has a global minimum at (1,1). So when we use this function to test out the optimization algorithms we will see that the minimum found is indeed at the point (1,1). */ { const double x = m(0); const double y = m(1); // compute Rosenbrock's function and return the result return 100.0*pow(y - x*x,2) + pow(1 - x,2); } // This is a helper function used while optimizing the rosen() function. const column_vector rosen_derivative (const column_vector& m) /*! ensures - returns the gradient vector for the rosen function !*/ { const double x = m(0); const double y = m(1); // make us a column vector of length 2 column_vector res(2); // now compute the gradient vector res(0) = -400*x*(y-x*x) - 2*(1-x); // derivative of rosen() with respect to x res(1) = 200*(y-x*x); // derivative of rosen() with respect to y return res; } // This function computes the Hessian matrix for the rosen() fuction. This is // the matrix of second derivatives. matrix rosen_hessian (const column_vector& m) { const double x = m(0); const double y = m(1); matrix res(2,2); // now compute the second derivatives res(0,0) = 1200*x*x - 400*y + 2; // second derivative with respect to x res(1,0) = res(0,1) = -400*x; // derivative with respect to x and y res(1,1) = 200; // second derivative with respect to y return res; } // ---------------------------------------------------------------------------------------- class rosen_model { /*! This object is a "function model" which can be used with the find_min_trust_region() routine. !*/ public: typedef ::column_vector column_vector; typedef matrix general_matrix; double operator() ( const column_vector& x ) const { return rosen(x); } void get_derivative_and_hessian ( const column_vector& x, column_vector& der, general_matrix& hess ) const { der = rosen_derivative(x); hess = rosen_hessian(x); } }; // ---------------------------------------------------------------------------------------- int main() try { // Set the starting point to (4,8). This is the point the optimization algorithm // will start out from and it will move it closer and closer to the function's // minimum point. So generally you want to try and compute a good guess that is // somewhat near the actual optimum value. column_vector starting_point = {4, 8}; // The first example below finds the minimum of the rosen() function and uses the // analytical derivative computed by rosen_derivative(). Since it is very easy to // make a mistake while coding a function like rosen_derivative() it is a good idea // to compare your derivative function against a numerical approximation and see if // the results are similar. If they are very different then you probably made a // mistake. So the first thing we do is compare the results at a test point: cout << "Difference between analytic derivative and numerical approximation of derivative: " << length(derivative(rosen)(starting_point) - rosen_derivative(starting_point)) << endl; cout << "Find the minimum of the rosen function()" << endl; // Now we use the find_min() function to find the minimum point. The first argument // to this routine is the search strategy we want to use. The second argument is the // stopping strategy. Below I'm using the objective_delta_stop_strategy which just // says that the search should stop when the change in the function being optimized // is small enough. // The other arguments to find_min() are the function to be minimized, its derivative, // then the starting point, and the last is an acceptable minimum value of the rosen() // function. That is, if the algorithm finds any inputs to rosen() that gives an output // value <= -1 then it will stop immediately. Usually you supply a number smaller than // the actual global minimum. So since the smallest output of the rosen function is 0 // we just put -1 here which effectively causes this last argument to be disregarded. find_min(bfgs_search_strategy(), // Use BFGS search algorithm objective_delta_stop_strategy(1e-7), // Stop when the change in rosen() is less than 1e-7 rosen, rosen_derivative, starting_point, -1); // Once the function ends the starting_point vector will contain the optimum point // of (1,1). cout << "rosen solution:\n" << starting_point << endl; // Now let's try doing it again with a different starting point and the version // of find_min() that doesn't require you to supply a derivative function. // This version will compute a numerical approximation of the derivative since // we didn't supply one to it. starting_point = {-94, 5.2}; find_min_using_approximate_derivatives(bfgs_search_strategy(), objective_delta_stop_strategy(1e-7), rosen, starting_point, -1); // Again the correct minimum point is found and stored in starting_point cout << "rosen solution:\n" << starting_point << endl; // Here we repeat the same thing as above but this time using the L-BFGS // algorithm. L-BFGS is very similar to the BFGS algorithm, however, BFGS // uses O(N^2) memory where N is the size of the starting_point vector. // The L-BFGS algorithm however uses only O(N) memory. So if you have a // function of a huge number of variables the L-BFGS algorithm is probably // a better choice. starting_point = {0.8, 1.3}; find_min(lbfgs_search_strategy(10), // The 10 here is basically a measure of how much memory L-BFGS will use. objective_delta_stop_strategy(1e-7).be_verbose(), // Adding be_verbose() causes a message to be // printed for each iteration of optimization. rosen, rosen_derivative, starting_point, -1); cout << endl << "rosen solution: \n" << starting_point << endl; starting_point = {-94, 5.2}; find_min_using_approximate_derivatives(lbfgs_search_strategy(10), objective_delta_stop_strategy(1e-7), rosen, starting_point, -1); cout << "rosen solution: \n"<< starting_point << endl; // dlib also supports solving functions subject to bounds constraints on // the variables. So for example, if you wanted to find the minimizer // of the rosen function where both input variables were in the range // 0.1 to 0.8 you would do it like this: starting_point = {0.1, 0.1}; // Start with a valid point inside the constraint box. find_min_box_constrained(lbfgs_search_strategy(10), objective_delta_stop_strategy(1e-9), rosen, rosen_derivative, starting_point, 0.1, 0.8); // Here we put the same [0.1 0.8] range constraint on each variable, however, you // can put different bounds on each variable by passing in column vectors of // constraints for the last two arguments rather than scalars. cout << endl << "constrained rosen solution: \n" << starting_point << endl; // You can also use an approximate derivative like so: starting_point = {0.1, 0.1}; find_min_box_constrained(bfgs_search_strategy(), objective_delta_stop_strategy(1e-9), rosen, derivative(rosen), starting_point, 0.1, 0.8); cout << endl << "constrained rosen solution: \n" << starting_point << endl; // In many cases, it is useful if we also provide second derivative information // to the optimizers. Two examples of how we can do that are shown below. starting_point = {0.8, 1.3}; find_min(newton_search_strategy(rosen_hessian), objective_delta_stop_strategy(1e-7), rosen, rosen_derivative, starting_point, -1); cout << "rosen solution: \n"<< starting_point << endl; // We can also use find_min_trust_region(), which is also a method which uses // second derivatives. For some kinds of non-convex function it may be more // reliable than using a newton_search_strategy with find_min(). starting_point = {0.8, 1.3}; find_min_trust_region(objective_delta_stop_strategy(1e-7), rosen_model(), starting_point, 10 // initial trust region radius ); cout << "rosen solution: \n"<< starting_point << endl; // Next, let's try the BOBYQA algorithm. This is a technique specially // designed to minimize a function in the absence of derivative information. // Generally speaking, it is the method of choice if derivatives are not available // and the function you are optimizing is smooth and has only one local optima. As // an example, consider the be_like_target function defined below: column_vector target = {3, 5, 1, 7}; auto be_like_target = [&](const column_vector& x) { return mean(squared(x-target)); }; starting_point = {-4,5,99,3}; find_min_bobyqa(be_like_target, starting_point, 9, // number of interpolation points uniform_matrix(4,1, -1e100), // lower bound constraint uniform_matrix(4,1, 1e100), // upper bound constraint 10, // initial trust region radius 1e-6, // stopping trust region radius 100 // max number of objective function evaluations ); cout << "be_like_target solution:\n" << starting_point << endl; // Finally, let's try the find_min_global() routine. Like find_min_bobyqa(), // this technique is specially designed to minimize a function in the absence // of derivative information. However, it is also designed to handle // functions with many local optima. Where BOBYQA would get stuck at the // nearest local optima, find_min_global() won't. find_min_global() uses a // global optimization method based on a combination of non-parametric global // function modeling and BOBYQA style quadratic trust region modeling to // efficiently find a global minimizer. It usually does a good job with a // relatively small number of calls to the function being optimized. // // You also don't have to give it a starting point or set any parameters, // other than defining bounds constraints. This makes it the method of // choice for derivative free optimization in the presence of multiple local // optima. Its API also allows you to define functions that take a // column_vector as shown above or to explicitly use named doubles as // arguments, which we do here. auto complex_holder_table = [](double x0, double x1) { // This function is a version of the well known Holder table test // function, which is a function containing a bunch of local optima. // Here we make it even more difficult by adding more local optima // and also a bunch of discontinuities. // add discontinuities double sign = 1; for (double j = -4; j < 9; j += 0.5) { if (j < x0 && x0 < j+0.5) x0 += sign*0.25; sign *= -1; } // Holder table function tilted towards 10,10 and with additional // high frequency terms to add more local optima. return -( std::abs(sin(x0)*cos(x1)*exp(std::abs(1-std::sqrt(x0*x0+x1*x1)/pi))) -(x0+x1)/10 - sin(x0*10)*cos(x1*10)); }; // To optimize this difficult function all we need to do is call // find_min_global() auto result = find_min_global(complex_holder_table, {-10,-10}, // lower bounds {10,10}, // upper bounds max_function_calls(300)); cout.precision(9); // These cout statements will show that find_min_global() found the // globally optimal solution to 9 digits of precision: cout << "complex holder table function solution y (should be -21.9210397): " << result.y << endl; cout << "complex holder table function solution x:\n" << result.x << endl; } catch (std::exception& e) { cout << e.what() << endl; }