update squiggle version
This commit is contained in:
parent
54bd358f7e
commit
3fb6eb0c0e
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@ -1,7 +1,7 @@
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OUTPUT=./samples
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build:
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gcc -O3 samples.c ./squiggle_c/squiggle.c ./squiggle_c/squiggle_more.c -lm -fopenmp -o $(OUTPUT)
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gcc -O3 -march=native samples.c ./squiggle_c/squiggle.c ./squiggle_c/squiggle_more.c -lm -fopenmp -o $(OUTPUT)
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install:
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rm -r squiggle_c
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Binary file not shown.
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@ -3,7 +3,7 @@
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#include <stdio.h>
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#include <stdlib.h>
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int main()
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double sampler_result(uint64_t * seed)
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{
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double p_a = 0.8;
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double p_b = 0.5;
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@ -17,11 +17,12 @@ int main()
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int n_dists = 4;
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double weights[] = { 1 - p_c, p_c / 2, p_c / 4, p_c / 4 };
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double (*samplers[])(uint64_t*) = { sample_0, sample_1, sample_few, sample_many };
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double sampler_result(uint64_t * seed)
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{
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return sample_mixture(samplers, weights, n_dists, seed);
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}
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int main()
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{
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int n_samples = 1000 * 1000, n_threads = 16;
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double* results = malloc((size_t)n_samples * sizeof(double));
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sampler_parallel(sampler_result, results, n_threads, n_samples);
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@ -44,14 +44,13 @@ void sampler_parallel(double (*sampler)(uint64_t* seed), double* results, int n_
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// uint64_t** seeds = malloc((size_t)n_threads * sizeof(uint64_t*));
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seed_cache_box* cache_box = (seed_cache_box*)malloc(sizeof(seed_cache_box) * (size_t)n_threads);
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// seed_cache_box cache_box[n_threads];
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// seed_cache_box cache_box[n_threads]; // we could use the C stack. On normal linux machines, it's 8MB ($ ulimit -s). However, it doesn't quite feel right.
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srand(1);
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for (int i = 0; i < n_threads; i++) {
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// Constraints:
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// - xorshift can't start with 0
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// - the seeds should be reasonably separated and not correlated
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cache_box[i].seed = (uint64_t)rand() * (UINT64_MAX / RAND_MAX);
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// printf("#%ld: %lu\n",i, *seeds[i]);
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// Other initializations tried:
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// *seeds[i] = 1 + i;
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@ -60,22 +59,51 @@ void sampler_parallel(double (*sampler)(uint64_t* seed), double* results, int n_
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}
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int i;
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#pragma omp parallel private(i, quotient)
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#pragma omp parallel private(i)
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{
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#pragma omp for
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for (i = 0; i < n_threads; i++) {
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int quotient = n_samples / n_threads;
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// It's possible I don't need the for, and could instead call omp
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// in some different way and get the thread number with omp_get_thread_num()
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int lower_bound_inclusive = i * quotient;
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int upper_bound_not_inclusive = ((i + 1) * quotient); // note the < in the for loop below,
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for (int j = lower_bound_inclusive; j < upper_bound_not_inclusive; j++) {
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results[j] = sampler(&(cache_box[i].seed));
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// Could also result in inefficient cache stuff, but hopefully not too often
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/*
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t starts at 0 and ends at T
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at t=0,
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thread i accesses: results[i*quotient +0],
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thread i+1 acccesses: results[(i+1)*quotient +0]
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at t=T
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thread i accesses: results[(i+1)*quotient -1]
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thread i+1 acccesses: results[(i+2)*quotient -1]
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The results[j] that are directly adjacent are
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results[(i+1)*quotient -1] (accessed by thread i at time T)
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results[(i+1)*quotient +0] (accessed by thread i+1 at time 0)
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and these are themselves adjacent to
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results[(i+1)*quotient -2] (accessed by thread i at time T-1)
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results[(i+1)*quotient +1] (accessed by thread i+1 at time 2)
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If T is large enough, which it is, two threads won't access the same
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cache line at the same time.
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Pictorially:
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at t=0 ....i.........I.........
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at t=T .............i.........I
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and the two never overlap
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Note that results[j] is a double, a double has 8 bytes (64 bits)
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8 doubles fill a cache line of 64 bytes.
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So we specifically won't get problems as long as n_samples/n_threads > 8
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n_threads is normally 16, so n_samples > 128
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Note also that this is only a problem in terms of speed, if n_samples<128
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the results are still computed, it'll just be slower
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*/
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}
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}
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}
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for (int j = divisor_multiple; j < n_samples; j++) {
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results[j] = sampler(&(cache_box[0].seed));
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// we can just reuse a seed, this isn't problematic because we are not doing multithreading
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// we can just reuse a seed,
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// this isn't problematic because we;ve now stopped doing multithreading
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}
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free(cache_box);
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@ -88,7 +116,7 @@ typedef struct ci_t {
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double high;
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} ci;
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static void swp(int i, int j, double xs[])
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inline static void swp(int i, int j, double xs[])
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{
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double tmp = xs[i];
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xs[i] = xs[j];
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@ -161,18 +189,222 @@ ci array_get_90_ci(double xs[], int n)
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return array_get_ci((ci) { .low = 0.05, .high = 0.95 }, xs, n);
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}
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ci sampler_get_ci(ci interval, double (*sampler)(uint64_t*), int n, uint64_t* seed)
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double array_get_median(double xs[], int n)
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{
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UNUSED(seed); // don't want to use it right now, but want to preserve ability to do so (e.g., remove parallelism from internals). Also nicer for consistency.
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double* xs = malloc((size_t)n * sizeof(double));
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sampler_parallel(sampler, xs, 16, n);
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ci result = array_get_ci(interval, xs, n);
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free(xs);
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return result;
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int median_k = (int)floor(0.5 * n);
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return quickselect(median_k, xs, n);
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}
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ci sampler_get_90_ci(double (*sampler)(uint64_t*), int n, uint64_t* seed)
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/* array print: potentially useful for debugging */
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void array_print(double xs[], int n)
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{
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return sampler_get_ci((ci) { .low = 0.05, .high = 0.95 }, sampler, n, seed);
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printf("[");
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for (int i = 0; i < n - 1; i++) {
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printf("%f, ", xs[i]);
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}
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printf("%f", xs[n - 1]);
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printf("]\n");
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}
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void array_print_stats(double xs[], int n)
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{
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ci ci_90 = array_get_ci((ci) { .low = 0.05, .high = 0.95 }, xs, n);
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ci ci_80 = array_get_ci((ci) { .low = 0.1, .high = 0.9 }, xs, n);
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ci ci_50 = array_get_ci((ci) { .low = 0.25, .high = 0.75 }, xs, n);
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double median = array_get_median(xs, n);
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double mean = array_mean(xs, n);
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double std = array_std(xs, n);
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printf("| Statistic | Value |\n"
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"| --- | --- |\n"
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"| Mean | %lf |\n"
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"| Median | %lf |\n"
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"| Std | %lf |\n"
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"| 90%% confidence interval | %lf to %lf |\n"
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"| 80%% confidence interval | %lf to %lf |\n"
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"| 50%% confidence interval | %lf to %lf |\n",
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mean, median, std, ci_90.low, ci_90.high, ci_80.low, ci_80.high, ci_50.low, ci_50.high);
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}
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void array_print_histogram(double* xs, int n_samples, int n_bins)
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{
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// Interface inspired by <https://github.com/red-data-tools/YouPlot>
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if (n_bins <= 1) {
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fprintf(stderr, "Number of bins must be greater than 1.\n");
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return;
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} else if (n_samples <= 1) {
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fprintf(stderr, "Number of samples must be higher than 1.\n");
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return;
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}
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int* bins = (int*)calloc((size_t)n_bins, sizeof(int));
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if (bins == NULL) {
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fprintf(stderr, "Memory allocation for bins failed.\n");
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return;
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}
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// Find the minimum and maximum values from the samples
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double min_value = xs[0], max_value = xs[0];
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for (int i = 0; i < n_samples; i++) {
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if (xs[i] < min_value) {
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min_value = xs[i];
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}
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if (xs[i] > max_value) {
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max_value = xs[i];
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}
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}
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// Avoid division by zero for a single unique value
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if (min_value == max_value) {
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max_value++;
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}
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// Calculate bin width
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double bin_width = (max_value - min_value) / n_bins;
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// Fill the bins with sample counts
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for (int i = 0; i < n_samples; i++) {
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int bin_index = (int)((xs[i] - min_value) / bin_width);
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if (bin_index == n_bins) {
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bin_index--; // Last bin includes max_value
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}
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bins[bin_index]++;
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}
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// Calculate the scaling factor based on the maximum bin count
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int max_bin_count = 0;
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for (int i = 0; i < n_bins; i++) {
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if (bins[i] > max_bin_count) {
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max_bin_count = bins[i];
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}
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}
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const int MAX_WIDTH = 50; // Adjust this to your terminal width
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double scale = max_bin_count > MAX_WIDTH ? (double)MAX_WIDTH / max_bin_count : 1.0;
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// Print the histogram
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for (int i = 0; i < n_bins; i++) {
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double bin_start = min_value + i * bin_width;
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double bin_end = bin_start + bin_width;
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int decimalPlaces = 1;
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if ((0 < bin_width) && (bin_width < 1)) {
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int magnitude = (int)floor(log10(bin_width));
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decimalPlaces = -magnitude;
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decimalPlaces = decimalPlaces > 10 ? 10 : decimalPlaces;
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}
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printf("[%*.*f, %*.*f", 4 + decimalPlaces, decimalPlaces, bin_start, 4 + decimalPlaces, decimalPlaces, bin_end);
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char interval_delimiter = ')';
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if (i == (n_bins - 1)) {
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interval_delimiter = ']'; // last bucket is inclusive
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}
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printf("%c: ", interval_delimiter);
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int marks = (int)(bins[i] * scale);
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for (int j = 0; j < marks; j++) {
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printf("█");
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}
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printf(" %d\n", bins[i]);
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}
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// Free the allocated memory for bins
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free(bins);
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}
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void array_print_90_ci_histogram(double* xs, int n_samples, int n_bins)
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{
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// Code duplicated from previous function
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// I'll consider simplifying it at some future point
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// Possible ideas:
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// - having only one function that takes any confidence interval?
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// - having a utility function that is called by both functions?
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ci ci_90 = array_get_90_ci(xs, n_samples);
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if (n_bins <= 1) {
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fprintf(stderr, "Number of bins must be greater than 1.\n");
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return;
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} else if (n_samples <= 10) {
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fprintf(stderr, "Number of samples must be higher than 10.\n");
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return;
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}
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int* bins = (int*)calloc((size_t)n_bins, sizeof(int));
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if (bins == NULL) {
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fprintf(stderr, "Memory allocation for bins failed.\n");
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return;
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}
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double min_value = ci_90.low, max_value = ci_90.high;
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// Avoid division by zero for a single unique value
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if (min_value == max_value) {
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max_value++;
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}
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double bin_width = (max_value - min_value) / n_bins;
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// Fill the bins with sample counts
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int below_min = 0, above_max = 0;
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for (int i = 0; i < n_samples; i++) {
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if (xs[i] < min_value) {
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below_min++;
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} else if (xs[i] > max_value) {
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above_max++;
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} else {
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int bin_index = (int)((xs[i] - min_value) / bin_width);
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if (bin_index == n_bins) {
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bin_index--; // Last bin includes max_value
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}
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bins[bin_index]++;
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}
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}
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// Calculate the scaling factor based on the maximum bin count
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int max_bin_count = 0;
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for (int i = 0; i < n_bins; i++) {
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if (bins[i] > max_bin_count) {
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max_bin_count = bins[i];
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}
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}
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const int MAX_WIDTH = 40; // Adjust this to your terminal width
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double scale = max_bin_count > MAX_WIDTH ? (double)MAX_WIDTH / max_bin_count : 1.0;
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// Print the histogram
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int decimalPlaces = 1;
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if ((0 < bin_width) && (bin_width < 1)) {
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int magnitude = (int)floor(log10(bin_width));
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decimalPlaces = -magnitude;
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decimalPlaces = decimalPlaces > 10 ? 10 : decimalPlaces;
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}
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printf("(%*s, %*.*f): ", 6 + decimalPlaces, "-∞", 4 + decimalPlaces, decimalPlaces, min_value);
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int marks_below_min = (int)(below_min * scale);
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for (int j = 0; j < marks_below_min; j++) {
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printf("█");
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}
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printf(" %d\n", below_min);
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for (int i = 0; i < n_bins; i++) {
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double bin_start = min_value + i * bin_width;
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double bin_end = bin_start + bin_width;
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printf("[%*.*f, %*.*f", 4 + decimalPlaces, decimalPlaces, bin_start, 4 + decimalPlaces, decimalPlaces, bin_end);
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char interval_delimiter = ')';
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if (i == (n_bins - 1)) {
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interval_delimiter = ']'; // last bucket is inclusive
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}
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printf("%c: ", interval_delimiter);
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int marks = (int)(bins[i] * scale);
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for (int j = 0; j < marks; j++) {
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printf("█");
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}
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printf(" %d\n", bins[i]);
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}
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printf("(%*.*f, %*s): ", 4 + decimalPlaces, decimalPlaces, max_value, 6 + decimalPlaces, "+∞");
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int marks_above_max = (int)(above_max * scale);
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for (int j = 0; j < marks_above_max; j++) {
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printf("█");
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}
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printf(" %d\n", above_max);
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// Free the allocated memory for bins
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free(bins);
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}
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/* Algebra manipulations */
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@ -225,216 +457,3 @@ ci convert_lognormal_params_to_ci(lognormal_params y)
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ci result = { .low = exp(loglow), .high = exp(loghigh) };
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return result;
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}
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/* Scaffolding to handle errors */
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// We will sample from an arbitrary cdf
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// and that operation might fail
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// so we build some scaffolding here
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#define MAX_ERROR_LENGTH 500
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#define EXIT_ON_ERROR 0
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#define PROCESS_ERROR(error_msg) process_error(error_msg, EXIT_ON_ERROR, __FILE__, __LINE__)
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typedef struct box_t {
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int empty;
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double content;
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char* error_msg;
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} box;
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box process_error(const char* error_msg, int should_exit, char* file, int line)
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{
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if (should_exit) {
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printf("%s, @, in %s (%d)", error_msg, file, line);
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exit(1);
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} else {
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char error_msg[MAX_ERROR_LENGTH];
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snprintf(error_msg, MAX_ERROR_LENGTH, "@, in %s (%d)", file, line); // NOLINT: We are being carefull here by considering MAX_ERROR_LENGTH explicitly.
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box error = { .empty = 1, .error_msg = error_msg };
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return error;
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}
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}
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/* Invert an arbitrary cdf at a point */
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// Version #1:
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// - input: (cdf: double => double, p)
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// - output: Box(number|error)
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box inverse_cdf_double(double cdf(double), double p)
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{
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// given a cdf: [-Inf, Inf] => [0,1]
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// returns a box with either
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// x such that cdf(x) = p
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// or an error
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// if EXIT_ON_ERROR is set to 1, it exits instead of providing an error
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double low = -1.0;
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double high = 1.0;
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// 1. Make sure that cdf(low) < p < cdf(high)
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int interval_found = 0;
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while ((!interval_found) && (low > -DBL_MAX / 4) && (high < DBL_MAX / 4)) {
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// for floats, use FLT_MAX instead
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// Note that this approach is overkill
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// but it's also the *correct* thing to do.
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int low_condition = (cdf(low) < p);
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int high_condition = (p < cdf(high));
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if (low_condition && high_condition) {
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interval_found = 1;
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} else if (!low_condition) {
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low = low * 2;
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} else if (!high_condition) {
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high = high * 2;
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}
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}
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if (!interval_found) {
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return PROCESS_ERROR("Interval containing the target value not found, in function inverse_cdf");
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} else {
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int convergence_condition = 0;
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int count = 0;
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while (!convergence_condition && (count < (INT_MAX / 2))) {
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double mid = (high + low) / 2;
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int mid_not_new = (mid == low) || (mid == high);
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// double width = high - low;
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// if ((width < 1e-8) || mid_not_new){
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if (mid_not_new) {
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convergence_condition = 1;
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} else {
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double mid_sign = cdf(mid) - p;
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if (mid_sign < 0) {
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||||
low = mid;
|
||||
} else if (mid_sign > 0) {
|
||||
high = mid;
|
||||
} else if (mid_sign == 0) {
|
||||
low = mid;
|
||||
high = mid;
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
if (convergence_condition) {
|
||||
box result = { .empty = 0, .content = low };
|
||||
return result;
|
||||
} else {
|
||||
return PROCESS_ERROR("Search process did not converge, in function inverse_cdf");
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
// Version #2:
|
||||
// - input: (cdf: double => Box(number|error), p)
|
||||
// - output: Box(number|error)
|
||||
box inverse_cdf_box(box cdf_box(double), double p)
|
||||
{
|
||||
// given a cdf: [-Inf, Inf] => Box([0,1])
|
||||
// returns a box with either
|
||||
// x such that cdf(x) = p
|
||||
// or an error
|
||||
// if EXIT_ON_ERROR is set to 1, it exits instead of providing an error
|
||||
|
||||
double low = -1.0;
|
||||
double high = 1.0;
|
||||
|
||||
// 1. Make sure that cdf(low) < p < cdf(high)
|
||||
int interval_found = 0;
|
||||
while ((!interval_found) && (low > -DBL_MAX / 4) && (high < DBL_MAX / 4)) {
|
||||
// for floats, use FLT_MAX instead
|
||||
// Note that this approach is overkill
|
||||
// but it's also the *correct* thing to do.
|
||||
box cdf_low = cdf_box(low);
|
||||
if (cdf_low.empty) {
|
||||
return PROCESS_ERROR(cdf_low.error_msg);
|
||||
}
|
||||
|
||||
box cdf_high = cdf_box(high);
|
||||
if (cdf_high.empty) {
|
||||
return PROCESS_ERROR(cdf_low.error_msg);
|
||||
}
|
||||
|
||||
int low_condition = (cdf_low.content < p);
|
||||
int high_condition = (p < cdf_high.content);
|
||||
if (low_condition && high_condition) {
|
||||
interval_found = 1;
|
||||
} else if (!low_condition) {
|
||||
low = low * 2;
|
||||
} else if (!high_condition) {
|
||||
high = high * 2;
|
||||
}
|
||||
}
|
||||
|
||||
if (!interval_found) {
|
||||
return PROCESS_ERROR("Interval containing the target value not found, in function inverse_cdf");
|
||||
} else {
|
||||
|
||||
int convergence_condition = 0;
|
||||
int count = 0;
|
||||
while (!convergence_condition && (count < (INT_MAX / 2))) {
|
||||
double mid = (high + low) / 2;
|
||||
int mid_not_new = (mid == low) || (mid == high);
|
||||
// double width = high - low;
|
||||
if (mid_not_new) {
|
||||
// if ((width < 1e-8) || mid_not_new){
|
||||
convergence_condition = 1;
|
||||
} else {
|
||||
box cdf_mid = cdf_box(mid);
|
||||
if (cdf_mid.empty) {
|
||||
return PROCESS_ERROR(cdf_mid.error_msg);
|
||||
}
|
||||
double mid_sign = cdf_mid.content - p;
|
||||
if (mid_sign < 0) {
|
||||
low = mid;
|
||||
} else if (mid_sign > 0) {
|
||||
high = mid;
|
||||
} else if (mid_sign == 0) {
|
||||
low = mid;
|
||||
high = mid;
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
if (convergence_condition) {
|
||||
box result = { .empty = 0, .content = low };
|
||||
return result;
|
||||
} else {
|
||||
return PROCESS_ERROR("Search process did not converge, in function inverse_cdf");
|
||||
}
|
||||
}
|
||||
}
|
||||
|
||||
/* Sample from an arbitrary cdf */
|
||||
// Before: invert an arbitrary cdf at a point
|
||||
// Now: from an arbitrary cdf, get a sample
|
||||
box sampler_cdf_box(box cdf(double), uint64_t* seed)
|
||||
{
|
||||
double p = sample_unit_uniform(seed);
|
||||
box result = inverse_cdf_box(cdf, p);
|
||||
return result;
|
||||
}
|
||||
box sampler_cdf_double(double cdf(double), uint64_t* seed)
|
||||
{
|
||||
double p = sample_unit_uniform(seed);
|
||||
box result = inverse_cdf_double(cdf, p);
|
||||
return result;
|
||||
}
|
||||
double sampler_cdf_danger(box cdf(double), uint64_t* seed)
|
||||
{
|
||||
double p = sample_unit_uniform(seed);
|
||||
box result = inverse_cdf_box(cdf, p);
|
||||
if (result.empty) {
|
||||
exit(1);
|
||||
} else {
|
||||
return result.content;
|
||||
}
|
||||
}
|
||||
|
||||
/* array print: potentially useful for debugging */
|
||||
void array_print(double xs[], int n)
|
||||
{
|
||||
printf("[");
|
||||
for (int i = 0; i < n - 1; i++) {
|
||||
printf("%f, ", xs[i]);
|
||||
}
|
||||
printf("%f", xs[n - 1]);
|
||||
printf("]\n");
|
||||
}
|
||||
|
|
|
@ -4,15 +4,18 @@
|
|||
/* Parallel sampling */
|
||||
void sampler_parallel(double (*sampler)(uint64_t* seed), double* results, int n_threads, int n_samples);
|
||||
|
||||
/* Get 90% confidence interval */
|
||||
/* Stats */
|
||||
double array_get_median(double xs[], int n);
|
||||
typedef struct ci_t {
|
||||
double low;
|
||||
double high;
|
||||
} ci;
|
||||
ci array_get_ci(ci interval, double* xs, int n);
|
||||
ci array_get_90_ci(double xs[], int n);
|
||||
ci sampler_get_ci(ci interval, double (*sampler)(uint64_t*), int n, uint64_t* seed);
|
||||
ci sampler_get_90_ci(double (*sampler)(uint64_t*), int n, uint64_t* seed);
|
||||
|
||||
void array_print_stats(double xs[], int n);
|
||||
void array_print_histogram(double* xs, int n_samples, int n_bins);
|
||||
void array_print_90_ci_histogram(double* xs, int n, int n_bins);
|
||||
|
||||
/* Algebra manipulations */
|
||||
|
||||
|
@ -31,24 +34,9 @@ lognormal_params algebra_product_lognormals(lognormal_params a, lognormal_params
|
|||
lognormal_params convert_ci_to_lognormal_params(ci x);
|
||||
ci convert_lognormal_params_to_ci(lognormal_params y);
|
||||
|
||||
/* Error handling */
|
||||
typedef struct box_t {
|
||||
int empty;
|
||||
double content;
|
||||
char* error_msg;
|
||||
} box;
|
||||
#define MAX_ERROR_LENGTH 500
|
||||
#define EXIT_ON_ERROR 0
|
||||
#define PROCESS_ERROR(error_msg) process_error(error_msg, EXIT_ON_ERROR, __FILE__, __LINE__)
|
||||
box process_error(const char* error_msg, int should_exit, char* file, int line);
|
||||
void array_print(double* array, int length);
|
||||
/* Utilities */
|
||||
|
||||
/* Inverse cdf */
|
||||
box inverse_cdf_double(double cdf(double), double p);
|
||||
box inverse_cdf_box(box cdf_box(double), double p);
|
||||
|
||||
/* Samplers from cdf */
|
||||
box sampler_cdf_double(double cdf(double), uint64_t* seed);
|
||||
box sampler_cdf_box(box cdf(double), uint64_t* seed);
|
||||
#define THOUSAND 1000
|
||||
#define MILLION 1000000
|
||||
|
||||
#endif
|
||||
|
|
Loading…
Reference in New Issue
Block a user