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to #include <> syntax.
267 lines
12 KiB
C++
267 lines
12 KiB
C++
// The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
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/*
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This is an example that shows some reasonable ways you can perform
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model selection with the dlib C++ Library.
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It will create a simple set of data and then show you how to use
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the cross validation and optimization routines to determine good model
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parameters for the purpose of training an svm to classify the sample data.
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The data used in this example will be 2 dimensional data and will
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come from a distribution where points with a distance less than 10
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from the origin are labeled +1 and all other points are labeled
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as -1.
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As an side, you should probably read the svm_ex.cpp and matrix_ex.cpp example
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programs before you read this one.
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*/
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#include <iostream>
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#include <dlib/svm.h>
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using namespace std;
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using namespace dlib;
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// The svm functions use column vectors to contain a lot of the data on which they
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// operate. So the first thing we do here is declare a convenient typedef.
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// This typedef declares a matrix with 2 rows and 1 column. It will be the
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// object that contains each of our 2 dimensional samples.
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typedef matrix<double, 2, 1> sample_type;
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// This is a typedef for the type of kernel we are going to use in this example.
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// In this case I have selected the radial basis kernel that can operate on our
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// 2D sample_type objects
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typedef radial_basis_kernel<sample_type> kernel_type;
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class cross_validation_objective
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{
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/*!
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WHAT THIS OBJECT REPRESENTS
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This object is a simple function object that takes a set of model
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parameters and returns a number indicating how "good" they are. It
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does this by performing 10 fold cross validation on our dataset
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and reporting the accuracy.
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See below in main() for how this object gets used.
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!*/
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public:
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cross_validation_objective (
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const std::vector<sample_type>& samples_,
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const std::vector<double>& labels_
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) : samples(samples_), labels(labels_) {}
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double operator() (
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const matrix<double>& params
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) const
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{
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// Pull out the two SVM model parameters. Note that, in this case,
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// I have setup the parameter search to operate in log scale so we have
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// to remember to call exp() to put the parameters back into a normal scale.
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const double gamma = exp(params(0));
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const double nu = exp(params(1));
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// Make an SVM trainer and tell it what the parameters are supposed to be.
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svm_nu_trainer<kernel_type> trainer;
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trainer.set_kernel(kernel_type(gamma));
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trainer.set_nu(nu);
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// Finally, perform 10-fold cross validation and then print and return the results.
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matrix<double> result = cross_validate_trainer(trainer, samples, labels, 10);
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cout << "gamma: " << setw(11) << gamma << " nu: " << setw(11) << nu << " cross validation accuracy: " << result;
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// Here I'm just summing the accuracy on each class. However, you could do something else.
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// For example, your application might require a 90% accuracy on class +1 and so you could
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// heavily penalize results that didn't obtain the desired accuracy. Or similarly, you
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// might use the roc_c1_trainer() function to adjust the trainer output so that it always
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// obtained roughly a 90% accuracy on class +1. In that case returning the sum of the two
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// class accuracies might be appropriate.
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return sum(result);
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}
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const std::vector<sample_type>& samples;
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const std::vector<double>& labels;
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};
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int main()
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{
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try
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{
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// Now we make objects to contain our samples and their respective labels.
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std::vector<sample_type> samples;
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std::vector<double> labels;
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// Now lets put some data into our samples and labels objects. We do this
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// by looping over a bunch of points and labeling them according to their
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// distance from the origin.
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for (double r = -20; r <= 20; r += 0.8)
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{
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for (double c = -20; c <= 20; c += 0.8)
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{
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sample_type samp;
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samp(0) = r;
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samp(1) = c;
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samples.push_back(samp);
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// if this point is less than 10 from the origin
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if (sqrt(r*r + c*c) <= 10)
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labels.push_back(+1);
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else
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labels.push_back(-1);
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}
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}
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cout << "Generated " << samples.size() << " points" << endl;
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// Here we normalize all the samples by subtracting their mean and dividing by their standard deviation.
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// This is generally a good idea since it often heads off numerical stability problems and also
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// prevents one large feature from smothering others. Doing this doesn't matter much in this example
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// so I'm just doing this here so you can see an easy way to accomplish this with
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// the library.
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vector_normalizer<sample_type> normalizer;
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// let the normalizer learn the mean and standard deviation of the samples
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normalizer.train(samples);
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// now normalize each sample
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for (unsigned long i = 0; i < samples.size(); ++i)
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samples[i] = normalizer(samples[i]);
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// Now that we have some data we want to train on it. However, there are two parameters to the
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// training. These are the nu and gamma parameters. Our choice for these parameters will
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// influence how good the resulting decision function is. To test how good a particular choice
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// of these parameters is we can use the cross_validate_trainer() function to perform n-fold cross
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// validation on our training data. However, there is a problem with the way we have sampled
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// our distribution above. The problem is that there is a definite ordering to the samples.
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// That is, the first half of the samples look like they are from a different distribution
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// than the second half. This would screw up the cross validation process but we can
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// fix it by randomizing the order of the samples with the following function call.
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randomize_samples(samples, labels);
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// The nu parameter has a maximum value that is dependent on the ratio of the +1 to -1
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// labels in the training data. This function finds that value. The 0.999 is here because
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// the maximum allowable nu is strictly less than the value returned by maximum_nu(). So
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// rather than dealing with that below we can just back away from it a little bit here and then
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// not worry about it.
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const double max_nu = 0.999*maximum_nu(labels);
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// The first kind of model selection we will do is a simple grid search. That is, below we just
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// generate a fixed grid of points (each point represents one possible setting of the model parameters)
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// and test each via cross validation.
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// This code generates a 4x4 grid of logarithmically spaced points. The result is a matrix
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// with 2 rows and 16 columns where each column represents one of our points.
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matrix<double> params = cartesian_product(logspace(log10(5.0), log10(1e-5), 4), // gamma parameter
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logspace(log10(max_nu), log10(1e-5), 4) // nu parameter
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);
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// As an aside, if you wanted to do a grid search over points of dimensionality more than two
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// you would just nest calls to cartesian_product(). You can also use linspace() to generate
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// linearly spaced points if that is more appropriate for the parameters you are working with.
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// Next we loop over all the points we generated and check how good each is.
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cout << "Doing a grid search" << endl;
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matrix<double> best_result(2,1);
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best_result = 0;
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double best_gamma = 0.1, best_nu;
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for (long col = 0; col < params.nc(); ++col)
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{
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// pull out the current set of model parameters
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const double gamma = params(0, col);
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const double nu = params(1, col);
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// setup a training object using our current parameters
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svm_nu_trainer<kernel_type> trainer;
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trainer.set_kernel(kernel_type(gamma));
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trainer.set_nu(nu);
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// Finally, do 10 fold cross validation and then check if the results are the best we have seen so far.
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matrix<double> result = cross_validate_trainer(trainer, samples, labels, 10);
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cout << "gamma: " << setw(11) << gamma << " nu: " << setw(11) << nu << " cross validation accuracy: " << result;
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// save the best results
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if (sum(result) > sum(best_result))
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{
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best_result = result;
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best_gamma = gamma;
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best_nu = nu;
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}
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}
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cout << "\n best result of grid search: " << sum(best_result) << endl;
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cout << " best gamma: " << best_gamma << " best nu: " << best_nu << endl;
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// Grid search is a very simple brute force method. Below we try out the BOBYQA algorithm.
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// It is a routine that performs optimization of a function in the absence of derivatives.
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cout << "\n\n Try the BOBYQA algorithm" << endl;
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// We need to supply a starting point for the optimization. Here we are using the best
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// result of the grid search. Generally, you want to try and give a reasonable starting
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// point due to the possibility of the optimization getting stuck in a local maxima.
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params.set_size(2,1);
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params = best_gamma, // initial gamma
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best_nu; // initial nu
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// We also need to supply lower and upper bounds for the search.
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matrix<double> lower_bound(2,1), upper_bound(2,1);
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lower_bound = 1e-7, // smallest allowed gamma
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1e-7; // smallest allowed nu
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upper_bound = 100, // largest allowed gamma
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max_nu; // largest allowed nu
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// For the gamma and nu SVM parameters it is generally a good idea to search
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// in log space. So I'm just converting them into log space here before
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// we start the optimization.
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params = log(params);
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lower_bound = log(lower_bound);
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upper_bound = log(upper_bound);
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// Finally, ask BOBYQA to look for the best set of parameters. Note that we are using the
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// cross validation function object defined at the top of the file.
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double best_score = find_max_bobyqa(
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cross_validation_objective(samples, labels), // Function to maximize
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params, // starting point
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params.size()*2 + 1, // See BOBYQA docs, generally size*2+1 is a good setting for this
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lower_bound, // lower bound
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upper_bound, // upper bound
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min(upper_bound-lower_bound)/10, // search radius
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0.01, // desired accuracy
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100 // max number of allowable calls to cross_validation_objective()
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);
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// Don't forget to convert back from log scale to normal scale
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params = exp(params);
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cout << " best result of BOBYQA: " << best_score << endl;
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cout << " best gamma: " << params(0) << " best nu: " << params(1) << endl;
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// Also note that the find_max_bobyqa() function only works for optimization problems
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// with 2 variables or more. If you only have a single variable then you should use
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// the find_max_single_variable() function.
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}
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catch (exception& e)
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{
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cout << e.what() << endl;
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}
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}
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