analistica/ex-1/main.c

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#include <stdio.h>
#include <stdlib.h>
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#include <math.h>
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#include <gsl/gsl_randist.h>
#include <gsl/gsl_histogram.h>
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#include <gsl/gsl_statistics_double.h>
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#include "landau.h"
#include "tests.h"
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/* Function that compare doubles for sorting:
* x > y 1
* x == y 0
* x < y -1
*/
int cmp_double (const void *xp, const void *yp) {
double x = *(double*)xp,
y = *(double*)yp;
return x > y ? 1 : -1;
}
/* Here we generate random numbers in a uniform
* range and by using the quantile we map them
* to a Landau distribution. Then we generate an
* histogram to check the correctness.
*/
int main(int argc, char** argv) {
// initialize an RNG
gsl_rng_env_setup();
gsl_rng *r = gsl_rng_alloc(gsl_rng_default);
// prepare histogram
size_t samples = 100000;
double* sample = calloc(samples, sizeof(double));
size_t bins = 40;
double min = -20;
double max = 20;
gsl_histogram* hist = gsl_histogram_alloc(bins);
gsl_histogram_set_ranges_uniform(hist, min, max);
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/* Sample generation
*
* Sample points from the Landau
* distribution and fill the histogram.
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*/
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fprintf(stderr, "# Sampling\n");
fprintf(stderr, "generating %ld points... ", samples);
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double x;
for(size_t i=0; i<samples; i++) {
x = gsl_ran_landau(r);
sample[i] = x;
gsl_histogram_increment(hist, x);
}
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fprintf(stderr, "done\n");
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// sort the sample
qsort(sample, samples, sizeof(double), &cmp_double);
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/* Kolmogorov-Smirnov test
*
* Compute the D statistic and its
* associated probability.
*/
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double D = 0;
double d;
for(size_t i=0; i<samples; i++) {
d = fabs(landau_cdf(sample[i], NULL) - ((double)i+1)/samples);
if (d > D)
D = d;
}
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fprintf(stderr, "\n\n# Kolmogorov-Smirnov test\n");
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double beta = kolmogorov_cdf(D, samples);
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// print the results
fprintf(stderr, "\n## Results\n");
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fprintf(stderr, "D: %f\n", D);
fprintf(stderr, "α: %g\n", 1 - beta);
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/* Mode comparison
*
* Find the bin with the maximum number of events
*/
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double mode_o, maxbin = 0;
double f_mode_o = 0;
double m1, m2 = 0;
for(size_t i=0; i<bins; i++) {
m1 = hist->bin[i];
if (m1 > m2){
m2 = m1;
maxbin = (double)i;
f_mode_o = hist->bin[i];
}
}
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fprintf(stderr, "\n\n# Mode comparison\n");
fprintf(stderr, "\nstep: %.2f\n ", (max - min)/bins);
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f_mode_o = f_mode_o/samples;
mode_o = min + (maxbin + 0.5)*(max - min)/bins;
// print the results
double mode_e = numeric_mode(min, max);
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fprintf(stderr, "\n## Results\n");
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fprintf(stderr, "expected mode: %.7f\n", mode_e);
fprintf(stderr, "observed mode: %.3f\n", mode_o);
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/* FWHM comparison
*
* Find the bins x and x.
*/
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double half = f_mode_o*samples/2;
m2 = samples;
double x_low = 0;
double x_upp = 0;
double diff;
for(size_t i=0; i<maxbin; i++) {
m1 = hist->bin[i];
diff = fabs(m1 - half);
if (diff < m2){
m2 = diff;
x_low = (double)i;
}
}
m2 = samples;
for(size_t i=maxbin; i<bins; i++) {
m1 = hist->bin[i];
diff = fabs(m1 - half);
if (diff < m2){
m2 = diff;
x_upp = (double)i;
}
}
x_low = min + (x_low + 0.5)*(max - min)/bins;
x_upp = min + (x_upp + 0.5)*(max - min)/bins;
double fwhm_o = x_upp - x_low;
// print the results
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fprintf(stderr, "\n\n# FWHM comparison\n");
double fwhm_e = numeric_fwhm(min, max, mode_e);
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fprintf(stderr, "\n# Results\n");
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fprintf(stderr, "expected FWHM: %.7f\n", fwhm_e);
fprintf(stderr, "observed FWHM: %.3f\n", fwhm_o);
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/* Median comparison
*
* Compute the median of the sample
* and compare it with QDF(1/2).
*/
fprintf(stderr, "\n\n# Median comparison\n");
double med_e = landau_qdf(0.5);
double med_o = gsl_stats_median_from_sorted_data(
sample, // sorted data
1, // array stride
samples); // number of elements
// print the results
fprintf(stderr, "\n# Results\n");
fprintf(stderr, "expected median: %.7f\n", med_e);
fprintf(stderr, "observed median: %.7f\n", med_o);
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// clean up and exit
gsl_histogram_free(hist);
gsl_rng_free(r);
free(sample);
return EXIT_SUCCESS;
}