estoy aplicando el algoritmo de agrupacion kmeans y actualmente estoy en la parte de actualizar los centroides pero me sale un error de violacion de segmento cuando trato de sumar los puntos de cada centroide y dividirlo entre el numero total de punto correspondientes a cada centroide, quizas si alguien me puede ayudar a identificar porque se da ese error se lo agradeceria.
Este es el codigo, el error se me presenta en a funcion newCentroids.
using namespace std;
using SPoint = vector<pair<size_t, double>>;
using Rates = map<pair<string, string>, double>; // (user,movie) -> rate
Rates readNetflix(const string& fname) {
ifstream input(fname);
string line;
size_t lines = 0;
Rates rates;
string currMovie;
while (getline(input, line)) {
if (line.back() == ':') {
line.pop_back();
currMovie = line;
cout << "Movie: " << currMovie << endl;
} else {
size_t endUser = line.find_first_of(",");
string currUser = line.substr(0, endUser);
line.erase(0, endUser + 1);
size_t endRate = line.find_first_of(",");
string currRate = line.substr(0, endRate);
rates[{currUser, currMovie}] = stoi(currRate);
}
lines++;
}
return rates;
}
vector<SPoint> createPoints(const Rates& rates) {
map<string, size_t> normUsers;
map<string, size_t> normMovies;
for (const auto& e : rates) {
const auto& user = e.first.first;
const auto& movie = e.first.second;
if (normUsers.count(user) == 0)
normUsers[user] = normUsers.size();
if (normMovies.count(movie) == 0)
normMovies[movie] = normMovies.size();
}
cout << "End of normalization " << normUsers.size() << " "
<< normMovies.size() << endl;
vector<SPoint> users(normUsers.size(),SPoint());
for (const auto& e : rates) {
size_t user = normUsers[e.first.first];
size_t movie = normMovies[e.first.second];
double rate = e.second;
pair<size_t,double> p= make_pair(movie, rate);
users[user].push_back(p);
}
return users;
}
double angle( const SPoint& p, const SPoint& q) {
double p_punto=0;
double norma_A=0;
double norma_B=0;
#pragma omp parallel for
for (size_t i = 0; i < p.size(); i++) {
p_punto=(p[i].first*q[i].first)+(p[i].second*q[i].second);
norma_A=(sqrt(pow(p[i].first,2)+pow(p[i].second,2)));
norma_B=(sqrt(pow(q[i].first,2)+pow(q[i].second,2)));
}
double A_Punto_B=norma_A*norma_B;
double division=0;
if (A_Punto_B != 0) {
division=p_punto/A_Punto_B;
}
double arc_cos=acos(division);
double rad_grados=(arc_cos*180)/3.1415926535;
return rad_grados;
}
void printClustering(const vector<SPoint>& dataset,
const vector<size_t>& clustering, size_t k) {
size_t n = dataset.size();
vector<size_t> count(k, 0);
for (size_t i = 0; i < n; i++) {
size_t ci = clustering[i];
count[ci]++;
}
for(size_t i = 0; i < k; i++) {
cout << " cluster " << i << ": " << count[i] << endl;
}
}
vector<SPoint> randomPoints(size_t k, const vector<SPoint>& ds) {
random_device rd;
mt19937 generator(rd());
uniform_int_distribution<> unif(0, ds.size()-1);
size_t dim = ds[0].size();
vector<SPoint> c(k,SPoint());
//#pragma omp parallel
//{
//#pragma omp parallel for
for (size_t i = 0; i < k; i++) {
size_t r = unif(rd);
pair<size_t,double> p= make_pair(r, r);
c[i].push_back(p);
}
//}
return c;
}
tuple<size_t, double> closestCentroid(const SPoint& p,
const vector<SPoint>& centroids) {
double d = numeric_limits<double>::max();
size_t c = 0;
//#pragma omp parallel
//{
//#pragma omp parallel for
for (size_t i = 0; i < centroids.size(); i++) {
double dt = angle(p, centroids[i]);
if (dt < d) {
d = dt;
c = i;
}
}
//}
return make_tuple(c,d);
}
pair<vector<size_t>, double> cluster(const vector<SPoint>& dataset,
const vector<SPoint>& centroids) {
size_t n = dataset.size();
vector<size_t> clustering(n, 0);
double ssd = 0.0;
for (size_t i = 0; i < n; i++) {
size_t c;
double d;
tie(c, d) = closestCentroid(dataset[i], centroids);
clustering[i] = c;
ssd += d;
}
return {clustering, ssd};
}
vector<SPoint> newCentroids(const vector<size_t>& clustering,
const vector<SPoint>& dataset,
vector<SPoint>& centroids) {
size_t k = centroids.size();
size_t dim = centroids[0].size();
vector<SPoint> newCentroids(k,SPoint());
vector<size_t> count(k, 0.0);
for (size_t i = 0; i < dataset.size(); i++) {
size_t ci = clustering[i];
cout <<"ci: " << ci<<endl;
for (size_t j = 0; j < dim; j++) {
newCentroids[ci][j].first += dataset[i][j].first;
newCentroids[ci][j].second += dataset[i][j].second;
}
count[ci]++;
}
//#pragma omp parallel
for (size_t i = 0; i < k; i++) {
for (size_t j = 0; j < dim; j++) {
newCentroids[i][j].first /= count[i];
}
}
return newCentroids;
}
//}
vector<size_t> kmeans(const vector<SPoint>& dataset, size_t k, double epsilon,
size_t maxIter) {
size_t dim = dataset[0].size();
size_t n = dataset.size();
vector<SPoint> centroids = randomPoints(k, dataset);
vector<size_t> clustering(n, 0);
double ssd = 0.0;
double ssdPrev = 0.0;
double d;
size_t iter = 0;
do{
ssdPrev = ssd;
cout << "Iteration " << iter << endl;
tie(clustering, ssd) = cluster(dataset, centroids);
cout << "SSD: " << ssd << endl;
centroids = newCentroids(clustering,dataset,centroids);
iter++;
d = abs(ssdPrev - ssd);
cout << "----> " << d << endl;
}while(d>epsilon);
return clustering;
}
int main(int argc, char** argv) {
if (argc != 2)
return -1;
string fname(argv[1]);
Rates rates = readNetflix(fname);
vector<SPoint> ds = createPoints(rates);
vector<size_t> clustering(21462,0);
clustering = kmeans(ds, 3, 0.001, 8);
printClustering(ds, clustering, 3);
return 0;
}
std::vector
que usas le estás pasando un índice fuera de su rango, depura el comportamiento devector<SPoint> users
(normUsers.size()
elementos indexado sobrerates.size()
),vector<size_t> count
(k
elementos indexado sobren
),vector<SPoint>& ds
, etc...