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neural_cluster.c
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neural_cluster.c
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/*
* =====================================================================================
*
* Filename: neural_cluster.c
*
* Description: Perform the clusterization over the output layer of the SOM neural
* network, in order to attempt to find the alerts belonging to the
* same attack scenario. The clusterization is operated through k-means
* using Schwarz criterion in order to find the optimal number of
* clusters, the implementation is in fkmeans/
*
* Version: 0.1
* Created: 19/11/2010 18:37:35
* Revision: none
* Compiler: gcc
*
* Author: BlackLight (http://0x00.ath.cx), <[email protected]>
* Licence: GNU GPL v.3
* Company: DO WHAT YOU WANT CAUSE A PIRATE IS FREE, YOU ARE A PIRATE!
*
* =====================================================================================
*/
#include "spp_ai.h"
/** \defgroup neural_cluster Module for clustering the alerts associated to the
* neural network output layer in order to find alerts belonging to the same scenario
* @{ */
#include "fkmeans/kmeans.h"
#include <stdio.h>
#include <stdlib.h>
#include <string.h>
#include <sys/stat.h>
#include <unistd.h>
#include <time.h>
/**
* \brief Print the clusters associated to the SOM output to an XML log file
* \param km k-means object
* \param alerts_per_neuron Hash table containing the alerts associated to each neuron
*/
PRIVATE void
__AI_neural_clusters_to_xml ( kmeans_t *km, AI_alerts_per_neuron *alerts_per_neuron )
{
int i, j, k, l, m, n, are_equal;
FILE *fp = NULL;
uint32_t src_addr = 0,
dst_addr = 0;
char src_ip[INET_ADDRSTRLEN] = { 0 },
dst_ip[INET_ADDRSTRLEN] = { 0 },
*timestamp = NULL,
*tmp = NULL,
*buf = NULL;
AI_alerts_per_neuron_key key, tmp_key;
AI_alerts_per_neuron *alert_iterator = NULL,
*tmp_iterator = NULL;
if ( !( fp = fopen ( config->neural_clusters_log, "w" )))
{
AI_fatal_err ( "Unable to write on the neural clusters XML log file", __FILE__, __LINE__ );
}
fprintf ( fp, "<?xml version=\"1.0\" encoding=\"UTF-8\"?>\n"
"<?xml-stylesheet href=\"default.xsl\" type=\"text/xsl\"?>\n"
"<!DOCTYPE neural-clusters PUBLIC \"-//blacklight//DTD NEURAL CLUSTERS//EN\" "
"\"http://0x00.ath.cx/neural_clusters.dtd\">\n\n"
"<clusters>\n" );
for ( i=0; i < km->k; i++ )
{
fprintf ( fp, "\t<cluster id=\"%d\">\n", i );
for ( j=0; j < km->cluster_sizes[i]; j++ )
{
key.x = km->clusters[i][j][0];
key.y = km->clusters[i][j][1];
HASH_FIND ( hh, alerts_per_neuron, &key, sizeof ( key ), alert_iterator );
if ( alert_iterator )
{
for ( k=0; k < alert_iterator->n_alerts; k++ )
{
are_equal = 0;
for ( l=0; l < alert_iterator->n_alerts && !are_equal; l++ )
{
if ( k != l )
{
if (
alert_iterator->alerts[k].gid == alert_iterator->alerts[l].gid &&
alert_iterator->alerts[k].sid == alert_iterator->alerts[l].sid &&
alert_iterator->alerts[k].rev == alert_iterator->alerts[l].rev &&
alert_iterator->alerts[k].src_ip_addr == alert_iterator->alerts[l].src_ip_addr &&
alert_iterator->alerts[k].dst_ip_addr == alert_iterator->alerts[l].dst_ip_addr &&
alert_iterator->alerts[k].src_port == alert_iterator->alerts[l].src_port &&
alert_iterator->alerts[k].dst_port == alert_iterator->alerts[l].dst_port &&
alert_iterator->alerts[k].timestamp == alert_iterator->alerts[l].timestamp )
{
are_equal = 1;
}
}
}
/* If no duplicate alert was found on the same neuron, check
* that there is no duplicate alert on other neurons */
if ( !are_equal )
{
for ( l=0; l < km->k && !are_equal; l++ )
{
for ( m=0; m < km->cluster_sizes[l] && !are_equal; m++ )
{
if ( l <= i && m < j )
{
tmp_key.x = km->clusters[l][m][0];
tmp_key.y = km->clusters[l][m][1];
HASH_FIND ( hh, alerts_per_neuron, &tmp_key, sizeof ( tmp_key ), tmp_iterator );
if ( tmp_iterator )
{
for ( n=0; n < tmp_iterator->n_alerts && !are_equal; n++ )
{
if (
alert_iterator->alerts[k].gid == tmp_iterator->alerts[n].gid &&
alert_iterator->alerts[k].sid == tmp_iterator->alerts[n].sid &&
alert_iterator->alerts[k].rev == tmp_iterator->alerts[n].rev &&
alert_iterator->alerts[k].src_ip_addr == tmp_iterator->alerts[n].src_ip_addr &&
alert_iterator->alerts[k].dst_ip_addr == tmp_iterator->alerts[n].dst_ip_addr &&
alert_iterator->alerts[k].src_port == tmp_iterator->alerts[n].src_port &&
alert_iterator->alerts[k].dst_port == tmp_iterator->alerts[n].dst_port &&
alert_iterator->alerts[k].timestamp == tmp_iterator->alerts[n].timestamp )
{
are_equal = 1;
}
}
}
}
}
}
}
if ( !are_equal )
{
src_addr = htonl ( alert_iterator->alerts[k].src_ip_addr );
dst_addr = htonl ( alert_iterator->alerts[k].dst_ip_addr );
inet_ntop ( AF_INET, &src_addr, src_ip, INET_ADDRSTRLEN );
inet_ntop ( AF_INET, &dst_addr, dst_ip, INET_ADDRSTRLEN );
timestamp = ctime ( &( alert_iterator->alerts[k].timestamp ));
timestamp[ strlen ( timestamp ) - 1 ] = 0;
tmp = str_replace ( alert_iterator->alerts[k].desc, "<", "<" );
buf = str_replace ( tmp, ">", ">" );
free ( tmp );
tmp = NULL;
fprintf ( fp, "\t\t<alert desc=\"%s\" gid=\"%d\" sid=\"%d\" rev=\"%d\" src_ip=\"%s\" src_port=\"%d\" "
"dst_ip=\"%s\" dst_port=\"%d\" timestamp=\"%s\" xcoord=\"%d\" ycoord=\"%d\"/>\n",
buf,
alert_iterator->alerts[k].gid,
alert_iterator->alerts[k].sid,
alert_iterator->alerts[k].rev,
src_ip, alert_iterator->alerts[k].src_port,
dst_ip, alert_iterator->alerts[k].dst_port,
timestamp,
alert_iterator->key.x, alert_iterator->key.y );
free ( buf );
buf = NULL;
}
}
}
}
fprintf ( fp, "\t</cluster>\n" );
}
fprintf ( fp, "</clusters>\n" );
fclose ( fp );
chmod ( config->neural_clusters_log, 0644 );
} /* ----- end of function __AI_neural_clusters_to_xml ----- */
/**
* \brief Thread that performs the k-means clustering over the output layer of
* the SOM neural network
*/
void*
AI_neural_clustering_thread ( void *arg )
{
AI_alerts_per_neuron *alerts_per_neuron = NULL,
*alert_iterator = NULL;
kmeans_t *km = NULL;
double **dataset = NULL;
int i, dataset_size = 0;
while ( 1 )
{
dataset = NULL;
dataset_size = 0;
alerts_per_neuron = AI_get_alerts_per_neuron();
for ( alert_iterator = alerts_per_neuron; alert_iterator; alert_iterator = (AI_alerts_per_neuron*) alert_iterator->hh.next )
{
if ( alert_iterator->n_alerts > 0 )
{
if ( !( dataset = (double**) realloc ( dataset, (++dataset_size) * sizeof ( double* ))))
{
AI_fatal_err ( "Fatal dynamic memory allocation error", __FILE__, __LINE__ );
}
if ( !( dataset[dataset_size-1] = (double*) calloc ( 2, sizeof ( double ))))
{
AI_fatal_err ( "Fatal dynamic memory allocation error", __FILE__, __LINE__ );
}
dataset[dataset_size-1][0] = (double) alert_iterator->key.x;
dataset[dataset_size-1][1] = (double) alert_iterator->key.y;
}
}
if ( dataset && dataset_size != 0 )
{
if ( !( km = kmeans_auto ( dataset, dataset_size, 2 )))
{
AI_fatal_err ( "Unable to initialize the k-means clustering object", __FILE__, __LINE__ );
}
__AI_neural_clusters_to_xml ( km, alerts_per_neuron );
kmeans_free ( km );
for ( i=0; i < dataset_size; i++ )
{
free ( dataset[i] );
}
free ( dataset );
}
sleep ( config->neuralClusteringInterval );
}
pthread_exit ((void*) 0);
return (void*) 0;
} /* ----- end of function AI_neural_clustering_thread ----- */
/** @} */