/**
* \addtogroup machine_learning Machine Learning Algorithms
* @{
* \file
* \brief [Kohonen self organizing
* map](https://en.wikipedia.org/wiki/Self-organizing_map) (data tracing)
*
* This example implements a powerful self organizing map algorithm.
* The algorithm creates a connected network of weights that closely
* follows the given data points. This this creates a chain of nodes that
* resembles the given input shape.
*
* \author [Krishna Vedala](https://github.com/kvedala)
*
* \note This C++ version of the program is considerable slower than its [C
* counterpart](https://github.com/kvedala/C/blob/master/machine_learning/kohonen_som_trace.c)
* \note The compiled code is much slower when compiled with MS Visual C++ 2019
* than with GCC on windows
* \see kohonen_som_topology.cpp
*/
#define _USE_MATH_DEFINES // required for MS Visual C++
#include <algorithm>
#include <array>
#include <cmath>
#include <cstdlib>
#include <ctime>
#include <fstream>
#include <iostream>
#include <valarray>
#include <vector>
#ifdef _OPENMP // check if OpenMP based parallellization is available
#include <omp.h>
#endif
/**
* Helper function to generate a random number in a given interval.
* \n Steps:
* 1. `r1 = rand() % 100` gets a random number between 0 and 99
* 2. `r2 = r1 / 100` converts random number to be between 0 and 0.99
* 3. scale and offset the random number to given range of \f$[a,b]\f$
*
* \param[in] a lower limit
* \param[in] b upper limit
* \returns random number in the range \f$[a,b]\f$
*/
double _random(double a, double b) {
return ((b - a) * (std::rand() % 100) / 100.f) + a;
}
/**
* Save a given n-dimensional data martix to file.
*
* \param[in] fname filename to save in (gets overwriten without confirmation)
* \param[in] X matrix to save
* \returns 0 if all ok
* \returns -1 if file creation failed
*/
int save_nd_data(const char *fname,
const std::vector<std::valarray<double>> &X) {
size_t num_points = X.size(); // number of rows
size_t num_features = X[0].size(); // number of columns
std::ofstream fp;
fp.open(fname);
if (!fp.is_open()) {
// error with opening file to write
std::cerr << "Error opening file " << fname << "\n";
return -1;
}
// for each point in the array
for (int i = 0; i < num_points; i++) {
// for each feature in the array
for (int j = 0; j < num_features; j++) {
fp << X[i][j]; // print the feature value
if (j < num_features - 1) { // if not the last feature
fp << ","; // suffix comma
}
}
if (i < num_points - 1) { // if not the last row
fp << "\n"; // start a new line
}
}
fp.close();
return 0;
}
/** \namespace machine_learning
* \brief Machine learning algorithms
*/
namespace machine_learning {
/**
* Update weights of the SOM using Kohonen algorithm
*
* \param[in] X data point
* \param[in,out] W weights matrix
* \param[in,out] D temporary vector to store distances
* \param[in] alpha learning rate \f$0<\alpha\le1\f$
* \param[in] R neighborhood range
*/
void update_weights(const std::valarray<double> &x,
std::vector<std::valarray<double>> *W,
std::valarray<double> *D, double alpha, int R) {
int j = 0, k = 0;
int num_out = W->size(); // number of SOM output nodes
// int num_features = x.size(); // number of data features
#ifdef _OPENMP
#pragma omp for
#endif
// step 1: for each output point
for (j = 0; j < num_out; j++) {
// compute Euclidian distance of each output
// point from the current sample
(*D)[j] = (((*W)[j] - x) * ((*W)[j] - x)).sum();
}
// step 2: get closest node i.e., node with snallest Euclidian distance to
// the current pattern
auto result = std::min_element(std::begin(*D), std::end(*D));
// double d_min = *result;
int d_min_idx = std::distance(std::begin(*D), result);
// step 3a: get the neighborhood range
int from_node = std::max(0, d_min_idx - R);
int to_node = std::min(num_out, d_min_idx + R + 1);
// step 3b: update the weights of nodes in the
// neighborhood
#ifdef _OPENMP
#pragma omp for
#endif
for (j = from_node; j < to_node; j++) {
// update weights of nodes in the neighborhood
(*W)[j] += alpha * (x - (*W)[j]);
}
}
/**
* Apply incremental algorithm with updating neighborhood and learning rates
* on all samples in the given datset.
*
* \param[in] X data set
* \param[in,out] W weights matrix
* \param[in] alpha_min terminal value of alpha
*/
void kohonen_som_tracer(const std::vector<std::valarray<double>> &X,
std::vector<std::valarray<double>> *W,
double alpha_min) {
int num_samples = X.size(); // number of rows
// int num_features = X[0].size(); // number of columns
int num_out = W->size(); // number of rows
int R = num_out >> 2, iter = 0;
double alpha = 1.f;
std::valarray<double> D(num_out);
// Loop alpha from 1 to slpha_min
do {
// Loop for each sample pattern in the data set
for (int sample = 0; sample < num_samples; sample++) {
// update weights for the current input pattern sample
update_weights(X[sample], W, &D, alpha, R);
}
// every 10th iteration, reduce the neighborhood range
if (iter % 10 == 0 && R > 1) {
R--;
}
alpha -= 0.01;
iter++;
} while (alpha > alpha_min);
}
} // namespace machine_learning
/** @} */
using machine_learning::kohonen_som_tracer;
/** Creates a random set of points distributed *near* the circumference
* of a circle and trains an SOM that finds that circular pattern. The
* generating function is
* \f{eqnarray*}{
* r &\in& [1-\delta r, 1+\delta r)\\
* \theta &\in& [0, 2\pi)\\
* x &=& r\cos\theta\\
* y &=& r\sin\theta
* \f}
*
* \param[out] data matrix to store data in
*/
void test_circle(std::vector<std::valarray<double>> *data) {
const int N = data->size();
const double R = 0.75, dr = 0.3;
double a_t = 0., b_t = 2.f * M_PI; // theta random between 0 and 2*pi
double a_r = R - dr, b_r = R + dr; // radius random between R-dr and R+dr
int i = 0;
#ifdef _OPENMP
#pragma omp for
#endif
for (i = 0; i < N; i++) {
double r = _random(a_r, b_r); // random radius
double theta = _random(a_t, b_t); // random theta
data[0][i][0] = r * cos(theta); // convert from polar to cartesian
data[0][i][1] = r * sin(theta);
}
}
/** Test that creates a random set of points distributed *near* the
* circumference of a circle and trains an SOM that finds that circular pattern.
* The following [CSV](https://en.wikipedia.org/wiki/Comma-separated_values)
* files are created to validate the execution:
* * `test1.csv`: random test samples points with a circular pattern
* * `w11.csv`: initial random map
* * `w12.csv`: trained SOM map
*
* The outputs can be readily plotted in [gnuplot](https:://gnuplot.info) using
* the following snippet
* ```gnuplot
* set datafile separator ','
* plot "test1.csv" title "original", \
* "w11.csv" title "w1", \
* "w12.csv" title "w2"
* ```
* ![Sample execution
* output](https://raw.githubusercontent.com/TheAlgorithms/C-Plus-Plus/docs/images/machine_learning/kohonen/test1.svg)
*/
void test1() {
int j = 0, N = 500;
int features = 2;
int num_out = 50;
std::vector<std::valarray<double>> X(N);
std::vector<std::valarray<double>> W(num_out);
for (int i = 0; i < std::max(num_out, N); i++) {
// loop till max(N, num_out)
if (i < N) { // only add new arrays if i < N
X[i] = std::valarray<double>(features);
}
if (i < num_out) { // only add new arrays if i < num_out
W[i] = std::valarray<double>(features);
#ifdef _OPENMP
#pragma omp for
#endif
for (j = 0; j < features; j++) {
// preallocate with random initial weights
W[i][j] = _random(-1, 1);
}
}
}
test_circle(&X); // create test data around circumference of a circle
save_nd_data("test1.csv", X); // save test data points
save_nd_data("w11.csv", W); // save initial random weights
kohonen_som_tracer(X, &W, 0.1); // train the SOM
save_nd_data("w12.csv", W); // save the resultant weights
}
/** Creates a random set of points distributed *near* the locus
* of the [Lamniscate of
* Gerono](https://en.wikipedia.org/wiki/Lemniscate_of_Gerono).
* \f{eqnarray*}{
* \delta r &=& 0.2\\
* \delta x &\in& [-\delta r, \delta r)\\
* \delta y &\in& [-\delta r, \delta r)\\
* \theta &\in& [0, \pi)\\
* x &=& \delta x + \cos\theta\\
* y &=& \delta y + \frac{\sin(2\theta)}{2}
* \f}
* \param[out] data matrix to store data in
*/
void test_lamniscate(std::vector<std::valarray<double>> *data) {
const int N = data->size();
const double dr = 0.2;
int i = 0;
#ifdef _OPENMP
#pragma omp for
#endif
for (i = 0; i < N; i++) {
double dx = _random(-dr, dr); // random change in x
double dy = _random(-dr, dr); // random change in y
double theta = _random(0, M_PI); // random theta
data[0][i][0] = dx + cos(theta); // convert from polar to cartesian
data[0][i][1] = dy + sin(2. * theta) / 2.f;
}
}
/** Test that creates a random set of points distributed *near* the locus
* of the [Lamniscate of
* Gerono](https://en.wikipedia.org/wiki/Lemniscate_of_Gerono) and trains an SOM
* that finds that circular pattern. The following
* [CSV](https://en.wikipedia.org/wiki/Comma-separated_values) files are created
* to validate the execution:
* * `test2.csv`: random test samples points with a lamniscate pattern
* * `w21.csv`: initial random map
* * `w22.csv`: trained SOM map
*
* The outputs can be readily plotted in [gnuplot](https:://gnuplot.info) using
* the following snippet
* ```gnuplot
* set datafile separator ','
* plot "test2.csv" title "original", \
* "w21.csv" title "w1", \
* "w22.csv" title "w2"
* ```
* ![Sample execution
* output](https://raw.githubusercontent.com/TheAlgorithms/C-Plus-Plus/docs/images/machine_learning/kohonen/test2.svg)
*/
void test2() {
int j = 0, N = 500;
int features = 2;
int num_out = 20;
std::vector<std::valarray<double>> X(N);
std::vector<std::valarray<double>> W(num_out);
for (int i = 0; i < std::max(num_out, N); i++) {
// loop till max(N, num_out)
if (i < N) { // only add new arrays if i < N
X[i] = std::valarray<double>(features);
}
if (i < num_out) { // only add new arrays if i < num_out
W[i] = std::valarray<double>(features);
#ifdef _OPENMP
#pragma omp for
#endif
for (j = 0; j < features; j++) {
// preallocate with random initial weights
W[i][j] = _random(-1, 1);
}
}
}
test_lamniscate(&X); // create test data around the lamniscate
save_nd_data("test2.csv", X); // save test data points
save_nd_data("w21.csv", W); // save initial random weights
kohonen_som_tracer(X, &W, 0.01); // train the SOM
save_nd_data("w22.csv", W); // save the resultant weights
}
/** Creates a random set of points distributed in six clusters in
* 3D space with centroids at the points
* * \f${0.5, 0.5, 0.5}\f$
* * \f${0.5, 0.5, -0.5}\f$
* * \f${0.5, -0.5, 0.5}\f$
* * \f${0.5, -0.5, -0.5}\f$
* * \f${-0.5, 0.5, 0.5}\f$
* * \f${-0.5, 0.5, -0.5}\f$
* * \f${-0.5, -0.5, 0.5}\f$
* * \f${-0.5, -0.5, -0.5}\f$
*
* \param[out] data matrix to store data in
*/
void test_3d_classes(std::vector<std::valarray<double>> *data) {
const int N = data->size();
const double R = 0.1; // radius of cluster
int i = 0;
const int num_classes = 8;
const std::array<const std::array<double, 3>, num_classes> centres = {
// centres of each class cluster
std::array<double, 3>({.5, .5, .5}), // centre of class 0
std::array<double, 3>({.5, .5, -.5}), // centre of class 1
std::array<double, 3>({.5, -.5, .5}), // centre of class 2
std::array<double, 3>({.5, -.5, -.5}), // centre of class 3
std::array<double, 3>({-.5, .5, .5}), // centre of class 4
std::array<double, 3>({-.5, .5, -.5}), // centre of class 5
std::array<double, 3>({-.5, -.5, .5}), // centre of class 6
std::array<double, 3>({-.5, -.5, -.5}) // centre of class 7
};
#ifdef _OPENMP
#pragma omp for
#endif
for (i = 0; i < N; i++) {
int cls =
std::rand() % num_classes; // select a random class for the point
// create random coordinates (x,y,z) around the centre of the class
data[0][i][0] = _random(centres[cls][0] - R, centres[cls][0] + R);
data[0][i][1] = _random(centres[cls][1] - R, centres[cls][1] + R);
data[0][i][2] = _random(centres[cls][2] - R, centres[cls][2] + R);
/* The follosing can also be used
for (int j = 0; j < 3; j++)
data[0][i][j] = _random(centres[cls][j] - R, centres[cls][j] + R);
*/
}
}
/** Test that creates a random set of points distributed in six clusters in
* 3D space. The following
* [CSV](https://en.wikipedia.org/wiki/Comma-separated_values) files are created
* to validate the execution:
* * `test3.csv`: random test samples points with a circular pattern
* * `w31.csv`: initial random map
* * `w32.csv`: trained SOM map
*
* The outputs can be readily plotted in [gnuplot](https:://gnuplot.info) using
* the following snippet
* ```gnuplot
* set datafile separator ','
* plot "test3.csv" title "original", \
* "w31.csv" title "w1", \
* "w32.csv" title "w2"
* ```
* ![Sample execution
* output](https://raw.githubusercontent.com/TheAlgorithms/C-Plus-Plus/docs/images/machine_learning/kohonen/test3.svg)
*/
void test3() {
int j = 0, N = 200;
int features = 3;
int num_out = 20;
std::vector<std::valarray<double>> X(N);
std::vector<std::valarray<double>> W(num_out);
for (int i = 0; i < std::max(num_out, N); i++) {
// loop till max(N, num_out)
if (i < N) { // only add new arrays if i < N
X[i] = std::valarray<double>(features);
}
if (i < num_out) { // only add new arrays if i < num_out
W[i] = std::valarray<double>(features);
#ifdef _OPENMP
#pragma omp for
#endif
for (j = 0; j < features; j++) {
// preallocate with random initial weights
W[i][j] = _random(-1, 1);
}
}
}
test_3d_classes(&X); // create test data around the lamniscate
save_nd_data("test3.csv", X); // save test data points
save_nd_data("w31.csv", W); // save initial random weights
kohonen_som_tracer(X, &W, 0.01); // train the SOM
save_nd_data("w32.csv", W); // save the resultant weights
}
/**
* Convert clock cycle difference to time in seconds
*
* \param[in] start_t start clock
* \param[in] end_t end clock
* \returns time difference in seconds
*/
double get_clock_diff(clock_t start_t, clock_t end_t) {
return static_cast<double>(end_t - start_t) / CLOCKS_PER_SEC;
}
/** Main function */
int main(int argc, char **argv) {
#ifdef _OPENMP
std::cout << "Using OpenMP based parallelization\n";
#else
std::cout << "NOT using OpenMP based parallelization\n";
#endif
std::srand(std::time(nullptr));
std::clock_t start_clk = std::clock();
test1();
auto end_clk = std::clock();
std::cout << "Test 1 completed in " << get_clock_diff(start_clk, end_clk)
<< " sec\n";
start_clk = std::clock();
test2();
end_clk = std::clock();
std::cout << "Test 2 completed in " << get_clock_diff(start_clk, end_clk)
<< " sec\n";
start_clk = std::clock();
test3();
end_clk = std::clock();
std::cout << "Test 3 completed in " << get_clock_diff(start_clk, end_clk)
<< " sec\n";
std::cout
<< "(Note: Calculated times include: creating test sets, training "
"model and writing files to disk.)\n\n";
return 0;
}