#include #include #include #include #include #include "genann.h" /* This example is to illustrate how to use GENANN. * It is NOT an example of good machine learning techniques. */ const char *iris_data = "example/iris.data"; double *input, *class; int samples; const char *class_names[] = {"Iris-setosa", "Iris-versicolor", "Iris-virginica"}; void load_data() { /* Load the iris data-set. */ FILE *in = fopen("example/iris.data", "r"); if (!in) { printf("Could not open file: %s\n", iris_data); exit(1); } /* Loop through the data to get a count. */ char line[1024]; while (!feof(in) && fgets(line, 1024, in)) { ++samples; } fseek(in, 0, SEEK_SET); printf("Loading %d data points from %s\n", samples, iris_data); /* Allocate memory for input and output data. */ input = malloc(sizeof(double) * samples * 4); class = malloc(sizeof(double) * samples * 3); /* Read the file into our arrays. */ int i, j; for (i = 0; i < samples; ++i) { double *p = input + i * 4; double *c = class + i * 3; c[0] = c[1] = c[2] = 0.0; if (fgets(line, 1024, in) == NULL) { perror("fgets"); exit(1); } char *split = strtok(line, ","); for (j = 0; j < 4; ++j) { p[j] = atof(split); split = strtok(0, ","); } split[strlen(split)-1] = 0; if (strcmp(split, class_names[0]) == 0) {c[0] = 1.0;} else if (strcmp(split, class_names[1]) == 0) {c[1] = 1.0;} else if (strcmp(split, class_names[2]) == 0) {c[2] = 1.0;} else { printf("Unknown class %s.\n", split); exit(1); } /* printf("Data point %d is %f %f %f %f -> %f %f %f\n", i, p[0], p[1], p[2], p[3], c[0], c[1], c[2]); */ } fclose(in); } int main(int argc, char *argv[]) { printf("GENANN example 4.\n"); printf("Train an ANN on the IRIS dataset using backpropagation.\n"); srand(time(0)); /* Load the data from file. */ load_data(); /* 4 inputs. * 1 hidden layer(s) of 4 neurons. * 3 outputs (1 per class) */ genann *ann = genann_init(4, 1, 4, 3); int i, j; int loops = 5000; /* Train the network with backpropagation. */ printf("Training for %d loops over data.\n", loops); for (i = 0; i < loops; ++i) { for (j = 0; j < samples; ++j) { genann_train(ann, input + j*4, class + j*3, .01); } /* printf("%1.2f ", xor_score(ann)); */ } int correct = 0; for (j = 0; j < samples; ++j) { const double *guess = genann_run(ann, input + j*4); if (class[j*3+0] == 1.0) {if (guess[0] > guess[1] && guess[0] > guess[2]) ++correct;} else if (class[j*3+1] == 1.0) {if (guess[1] > guess[0] && guess[1] > guess[2]) ++correct;} else if (class[j*3+2] == 1.0) {if (guess[2] > guess[0] && guess[2] > guess[1]) ++correct;} else {printf("Logic error.\n"); exit(1);} } printf("%d/%d correct (%0.1f%%).\n", correct, samples, (double)correct / samples * 100.0); genann_free(ann); free(input); free(class); return 0; }