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/**
* @file GenSVMtraintest.c
* @author Gertjan van den Burg
* @date February, 2015
* @brief Command line interface for training and testing with a GenSVM model
*
* @details
* This is a command line program for training and testing on a single model
* with specified model parameters.
*
*/
#include "gensvm_cmdarg.h"
#include "gensvm_io.h"
#include "gensvm_train.h"
#include "gensvm_pred.h"
#define MINARGS 2
extern FILE *GENSVM_OUTPUT_FILE;
extern FILE *GENSVM_ERROR_FILE;
// function declarations
void exit_with_help();
void parse_command_line(int argc, char **argv, struct GenModel *model,
char **model_inputfile, char **training_inputfile,
char **testing_inputfile, char **model_outputfile,
char **prediction_outputfile);
void exit_with_help()
{
printf("This is GenSVM, version %1.1f\n\n", VERSION);
printf("Usage: ./gensvm [options] training_data [test_data]\n");
printf("Options:\n");
printf("-c coef : coefficient for the polynomial and sigmoid kernel\n");
printf("-d degree : degree for the polynomial kernel\n");
printf("-e epsilon : set the value of the stopping criterion\n");
printf("-g gamma : parameter for the rbf, polynomial or sigmoid "
"kernel\n");
printf("-h | -help : print this help.\n");
printf("-k kappa : set the value of kappa used in the Huber hinge\n");
printf("-l lambda : set the value of lambda (lambda > 0)\n");
printf("-s seed_model_file : use previous model as seed for V\n");
printf("-m model_output_file : write model output to file\n");
printf("-o prediction_output : write predictions of test data to "
"file\n");
printf("-p p-value : set the value of p in the lp norm "
"(1.0 <= p <= 2.0)\n");
printf("-q : quiet mode (no output, not even errors!)\n");
printf("-r rho : choose the weigth specification (1 = unit, 2 = "
"group)\n");
printf("-t type: kerneltype (0=LINEAR, 1=POLY, 2=RBF, 3=SIGMOID)\n");
exit(EXIT_FAILURE);
}
int main(int argc, char **argv)
{
long i, *predy = NULL;
double performance;
char *training_inputfile = NULL,
*testing_inputfile = NULL,
*model_inputfile = NULL,
*model_outputfile = NULL,
*prediction_outputfile = NULL;
struct GenModel *model = gensvm_init_model();
struct GenModel *seed_model = NULL;
struct GenData *traindata = gensvm_init_data();
struct GenData *testdata = gensvm_init_data();
if (argc < MINARGS || gensvm_check_argv(argc, argv, "-help")
|| gensvm_check_argv_eq(argc, argv, "-h"))
exit_with_help();
parse_command_line(argc, argv, model, &model_inputfile,
&training_inputfile, &testing_inputfile,
&model_outputfile, &prediction_outputfile);
// read data from files
gensvm_read_data(traindata, training_inputfile);
model->data_file = Calloc(char, MAX_LINE_LENGTH);
strcpy(model->data_file, training_inputfile);
// seed the random number generator
//srand(time(NULL));
//
// XXX temporary
srand(2135);
// load a seed model from file if it is specified
if (gensvm_check_argv_eq(argc, argv, "-s")) {
seed_model = gensvm_init_model();
gensvm_read_model(seed_model, model_inputfile);
}
// train the GenSVM model
gensvm_train(model, traindata, seed_model);
// if we also have a test set, predict labels and write to predictions
// to an output file if specified
if (testing_inputfile != NULL) {
gensvm_read_data(testdata, testing_inputfile);
gensvm_kernel_postprocess(model, traindata, testdata);
// predict labels
predy = Calloc(long, testdata->n);
gensvm_predict_labels(testdata, model, predy);
if (testdata->y != NULL) {
performance = gensvm_prediction_perf(testdata, predy);
note("Predictive performance: %3.2f%%\n", performance);
}
// if output file is specified, write predictions to it
if (gensvm_check_argv_eq(argc, argv, "-o")) {
gensvm_write_predictions(testdata, predy,
prediction_outputfile);
note("Prediction written to: %s\n",
prediction_outputfile);
} else {
for (i=0; i<testdata->n; i++)
printf("%li ", predy[i]);
printf("\n");
}
}
// write model to output file if necessary
if (gensvm_check_argv_eq(argc, argv, "-m")) {
gensvm_write_model(model, model_outputfile);
note("Model written to: %s\n", model_outputfile);
}
// free everything
gensvm_free_model(model);
gensvm_free_model(seed_model);
gensvm_free_data(traindata);
gensvm_free_data(testdata);
free(training_inputfile);
free(testing_inputfile);
free(model_inputfile);
free(model_outputfile);
free(prediction_outputfile);
free(predy);
return 0;
}
void parse_command_line(int argc, char **argv, struct GenModel *model,
char **model_inputfile, char **training_inputfile,
char **testing_inputfile, char **model_outputfile,
char **prediction_outputfile)
{
int i;
double gamma = 1.0,
degree = 2.0,
coef = 0.0;
GENSVM_OUTPUT_FILE = stdout;
GENSVM_ERROR_FILE = stderr;
// parse options
for (i=1; i<argc; i++) {
if (argv[i][0] != '-') break;
if (++i>=argc) {
exit_with_help();
}
switch (argv[i-1][1]) {
case 'c':
coef = atof(argv[i]);
break;
case 'd':
degree = atof(argv[i]);
break;
case 'e':
model->epsilon = atof(argv[i]);
break;
case 'g':
gamma = atof(argv[i]);
break;
case 'k':
model->kappa = atof(argv[i]);
break;
case 'l':
model->lambda = atof(argv[i]);
break;
case 's':
(*model_inputfile) = Malloc(char,
strlen(argv[i])+1);
strcpy((*model_inputfile), argv[i]);
break;
case 'm':
(*model_outputfile) = Malloc(char,
strlen(argv[i])+1);
strcpy((*model_outputfile), argv[i]);
break;
case 'o':
(*prediction_outputfile) = Malloc(char,
strlen(argv[i])+1);
strcpy((*prediction_outputfile), argv[i]);
break;
case 'p':
model->p = atof(argv[i]);
break;
case 'r':
model->weight_idx = atoi(argv[i]);
break;
case 't':
model->kerneltype = atoi(argv[i]);
break;
case 'q':
GENSVM_OUTPUT_FILE = NULL;
GENSVM_ERROR_FILE = NULL;
i--;
break;
default:
// this one should always print explicitly to
// stderr, even if '-q' is supplied, because
// otherwise you can't debug cmdline flags.
fprintf(stderr, "Unknown option: -%c\n",
argv[i-1][1]);
exit_with_help();
}
}
if (i >= argc)
exit_with_help();
(*training_inputfile) = Malloc(char, strlen(argv[i])+1);
strcpy((*training_inputfile), argv[i]);
if (i+2 == argc) {
(*testing_inputfile) = Malloc(char, strlen(argv[i])+1);
strcpy((*testing_inputfile), argv[i+1]);
}
// set kernel parameters
switch (model->kerneltype) {
case K_LINEAR:
break;
case K_POLY:
model->kernelparam = Calloc(double, 3);
model->kernelparam[0] = gamma;
model->kernelparam[1] = coef;
model->kernelparam[2] = degree;
break;
case K_RBF:
model->kernelparam = Calloc(double, 1);
model->kernelparam[0] = gamma;
break;
case K_SIGMOID:
model->kernelparam = Calloc(double, 1);
model->kernelparam[0] = gamma;
model->kernelparam[1] = coef;
}
}
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