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285 lines
10 KiB
C++
285 lines
10 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 illustrating the use of the linear_manifold_regularizer
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and empirical_kernel_map from the dlib C++ Library.
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This example program assumes you are familiar with some general elements of
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the library. In particular, you should have at least read the svm_ex.cpp
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and matrix_ex.cpp examples. You should also have read the empirical_kernel_map_ex.cpp
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example program as the present example builds upon it.
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This program shows an example of what is called semi-supervised learning.
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That is, a small amount of labeled data is augmented with a large amount
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of unlabeled data. A learning algorithm is then run on all the data
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and the hope is that by including the unlabeled data we will end up with
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a better result.
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In this particular example we will generate 200,000 sample points of
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unlabeled data along with 2 samples of labeled data. The sample points
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will be drawn randomly from two concentric circles. One labeled data
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point will be drawn from each circle. The goal is to learn to
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correctly separate the two circles using only the 2 labeled points
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and the unlabeled data.
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To do this we will first run an approximate form of k nearest neighbors
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to determine which of the unlabeled samples are closest together. We will
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then make the manifold assumption, that is, we will assume that points close
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to each other should share the same classification label.
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Once we have determined which points are near neighbors we will use the
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empirical_kernel_map and linear_manifold_regularizer to transform all the
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data points into a new vector space where any linear rule will have similar
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output for points which we have decided are near neighbors.
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Finally, we will classify all the unlabeled data according to which of
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the two labeled points are nearest. Normally this would not work but by
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using the manifold assumption we will be able to successfully classify
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all the unlabeled data.
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For further information on this subject you should begin with the following
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paper as it discusses a very similar application of manifold regularization.
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Beyond the Point Cloud: from Transductive to Semi-supervised Learning
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by Vikas Sindhwani, Partha Niyogi, and Mikhail Belkin
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******** SAMPLE PROGRAM OUTPUT ********
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Testing manifold regularization with an intrinsic_regularization_strength of 0.
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number of edges generated: 49998
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Running simple test...
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error: 0.37022
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error: 0.44036
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error: 0.376715
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error: 0.307545
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error: 0.463455
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error: 0.426065
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error: 0.416155
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error: 0.288295
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error: 0.400115
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error: 0.46347
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Testing manifold regularization with an intrinsic_regularization_strength of 10000.
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number of edges generated: 49998
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Running simple test...
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error: 0
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error: 0
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error: 0
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error: 0
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error: 0
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error: 0
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error: 0
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error: 0
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error: 0
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error: 0
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*/
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#include "dlib/manifold_regularization.h"
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#include "dlib/svm.h"
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#include "dlib/rand.h"
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#include "dlib/statistics.h"
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#include <iostream>
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#include <vector>
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#include <ctime>
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using namespace std;
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using namespace dlib;
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// ----------------------------------------------------------------------------------------
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// First lets make a typedef for the kind of samples we will be using.
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typedef matrix<double, 0, 1> sample_type;
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// We will be using the radial_basis_kernel in this example program.
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typedef radial_basis_kernel<sample_type> kernel_type;
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// ----------------------------------------------------------------------------------------
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void generate_circle (
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std::vector<sample_type>& samples,
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double radius,
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const long num
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);
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/*!
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requires
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- num > 0
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- radius > 0
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ensures
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- generates num points centered at (0,0) with the given radius. Adds these
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points into the given samples vector.
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!*/
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// ----------------------------------------------------------------------------------------
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void test_manifold_regularization (
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const double intrinsic_regularization_strength
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);
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/*!
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ensures
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- Runs an example test using the linear_manifold_regularizer with the given
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intrinsic_regularization_strength.
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!*/
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// ----------------------------------------------------------------------------------------
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int main()
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{
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// Run the test without any manifold regularization.
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test_manifold_regularization(0);
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// Run the test with manifold regularization. You can think of this number as
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// a measure of how much we trust the manifold assumption. So if you are really
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// confident that you can select neighboring points which should have the same
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// classification then make this number big.
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test_manifold_regularization(10000.0);
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}
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// ----------------------------------------------------------------------------------------
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void test_manifold_regularization (
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const double intrinsic_regularization_strength
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)
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{
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cout << "Testing manifold regularization with an intrinsic_regularization_strength of "
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<< intrinsic_regularization_strength << ".\n";
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std::vector<sample_type> samples;
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// Declare an instance of the kernel we will be using.
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const kernel_type kern(0.1);
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const unsigned long num_points = 100000;
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// create a large dataset with two concentric circles. There will be 100000 points on each circle
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// for a total of 200000 samples.
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generate_circle(samples, 2, num_points); // circle of radius 2
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generate_circle(samples, 4, num_points); // circle of radius 4
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// Create a set of sample_pairs that tells us which samples are "close" and should thus
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// be classified similarly. These edges will be used to define the manifold regularizer.
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// To find these edges we use a simple function that samples point pairs randomly and
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// returns the top 5% with the shortest edges.
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std::vector<sample_pair> edges;
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find_percent_shortest_edges_randomly(samples, squared_euclidean_distance(), 0.05, 1000000, time(0), edges);
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cout << "number of edges generated: " << edges.size() << endl;
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empirical_kernel_map<kernel_type> ekm;
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// Since the circles are not linearly separable we will use an empirical kernel map to
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// map them into a space where they are separable. We create an empirical_kernel_map
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// using a random subset of our data samples as basis samples. Note, however, that even
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// though the circles are linearly separable in this new space given by the empirical_kernel_map
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// we still won't be able to correctly classify all the points given just the 2 labeled examples.
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// We will need to make use of the nearest neighbor information stored in edges. To do that
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// we will use the linear_manifold_regularizer.
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ekm.load(kern, randomly_subsample(samples, 50));
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// Project all the samples into the span of our 50 basis samples
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for (unsigned long i = 0; i < samples.size(); ++i)
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samples[i] = ekm.project(samples[i]);
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// Now create the manifold regularizer. The result is a transformation matrix that
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// embodies the manifold assumption discussed above.
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linear_manifold_regularizer<sample_type> lmr;
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// use_gaussian_weights is a function object that tells lmr how to weight each edge. In this
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// case we let the weight decay as edges get longer. So shorter edges are more important than
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// longer edges.
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lmr.build(samples, edges, use_gaussian_weights(0.1));
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const matrix<double> T = lmr.get_transformation_matrix(intrinsic_regularization_strength);
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// Apply the transformation generated by the linear_manifold_regularizer to
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// all our samples.
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for (unsigned long i = 0; i < samples.size(); ++i)
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samples[i] = T*samples[i];
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// For convenience, generate a projection_function and merge the transformation
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// matrix T into it. That is, we will have: proj(x) == T*ekm.project(x).
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projection_function<kernel_type> proj = ekm.get_projection_function();
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proj.weights = T*proj.weights;
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cout << "Running simple test..." << endl;
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// Pick 2 different labeled points. One on the inner circle and another on the outer.
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// For each of these test points we will see if using the single plane that separates
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// them is a good way to separate the concentric circles. We also do this a bunch
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// of times with different randomly chosen points so we can see how robust the result is.
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for (int itr = 0; itr < 10; ++itr)
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{
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std::vector<sample_type> test_points;
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// generate a random point from the radius 2 circle
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generate_circle(test_points, 2, 1);
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// generate a random point from the radius 4 circle
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generate_circle(test_points, 4, 1);
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// project the two test points into kernel space. Recall that this projection_function
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// has the manifold regularizer incorporated into it.
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const sample_type class1_point = proj(test_points[0]);
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const sample_type class2_point = proj(test_points[1]);
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double num_wrong = 0;
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// Now attempt to classify all the data samples according to which point
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// they are closest to. The output of this program shows that without manifold
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// regularization this test will fail but with it it will perfectly classify
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// all the points.
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for (unsigned long i = 0; i < samples.size(); ++i)
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{
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double distance_to_class1 = length(samples[i] - class1_point);
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double distance_to_class2 = length(samples[i] - class2_point);
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bool predicted_as_class_1 = (distance_to_class1 < distance_to_class2);
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bool really_is_class_1 = (i < num_points);
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// now count how many times we make a mistake
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if (predicted_as_class_1 != really_is_class_1)
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++num_wrong;
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}
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cout << "error: "<< num_wrong/samples.size() << endl;
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}
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cout << endl;
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}
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// ----------------------------------------------------------------------------------------
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dlib::rand::float_1a rnd;
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void generate_circle (
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std::vector<sample_type>& samples,
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double radius,
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const long num
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)
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{
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sample_type m(2,1);
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for (long i = 0; i < num; ++i)
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{
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double sign = 1;
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if (rnd.get_random_double() < 0.5)
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sign = -1;
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m(0) = 2*radius*rnd.get_random_double()-radius;
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m(1) = sign*sqrt(radius*radius - m(0)*m(0));
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samples.push_back(m);
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}
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}
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// ----------------------------------------------------------------------------------------
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