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lpred.cpp
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219 lines (152 loc) · 5.45 KB
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#include<bits/stdc++.h>
using namespace std;
template <typename T1, typename T2>
struct less_second {
typedef pair<T1, T2> type;
bool operator ()(type const& a, type const& b) const {
return a.second > b.second;
}
};
class Graph
{
int V;
map<int, list<int>> adj;
public:
int getV();
void setV(int);
void addEdge(int, int);
double clusteringCoeff(int);
double averageClusteringCoeff();
map<pair<int, int>, double> findSimilarityValues(unordered_set<int> &, double, double);
bool isEdge(int, int);
};
void Graph::setV(int V)
{
this->V = V;
}
int Graph::getV(){
return V;
}
void Graph::addEdge(int v, int w)
{
adj[v].push_back(w);
// adj[w].push_back(v);
}
bool Graph::isEdge(int x, int y){
return find(adj[x].begin(), adj[x].end(), y) != adj[x].end();
}
double Graph::clusteringCoeff(int v){
set<pair<int, int>> clusters;
list<int>::iterator i;
for(i = adj[v].begin(); i != adj[v].end(); ++i){
list<int>::iterator j;
for(j = adj[*i].begin(); j != adj[*i].end(); ++j){
if(find(adj[v].begin(), adj[v].end(), *j) != adj[v].end()){
int a[2] = {*i,*j};
sort(a,a+2);
clusters.insert(make_pair(a[0],a[1]));
}
}
}
if((adj[v].size())*(adj[v].size()-1) == 0)
return 0;
return (double)clusters.size()/((adj[v].size())*(adj[v].size()-1));
}
double Graph::averageClusteringCoeff(){
double totalClusteringCoeff = 0;
map<int, list<int>>::iterator itr;
for (itr = adj.begin(); itr != adj.end(); ++itr) {
totalClusteringCoeff += clusteringCoeff(itr->first);
}
return totalClusteringCoeff/V;
}
map<pair<int, int>, double> Graph:: findSimilarityValues(unordered_set<int> &vertices, double C, double beta){
map<pair<int, int>, double> similarityValues;
unordered_set<int>::iterator itrF, itrS;
for(itrF = vertices.begin(); itrF != vertices.end(); ++itrF){
for(itrS = vertices.begin(); itrS != vertices.end(); ++itrS){
if(*itrF == *itrS)
continue;
int x = *itrF, y = *itrS;
if(find(adj[x].begin(), adj[x].end(), *itrS) == adj[x].end()){
similarityValues[make_pair(x,y)] = 0;
set<int> z;
list<int>::iterator itr;
for(itr = adj[x].begin(); itr != adj[x].end(); ++itr){
if(find(adj[y].begin(), adj[y].end(), *itr) != adj[y].end() || find(adj[*itr].begin(), adj[*itr].end(), y) != adj[*itr].end())
z.insert(*itr);
}
set<int>::iterator i;
for(i = z.begin(); i != z.end(); ++i){
int tao = adj[*i].size();
int cz = 0;
for(itr = adj[*i].begin(); itr != adj[*i].end(); ++itr){
if(find(z.begin(), z.end(), *itr) != z.end())
cz++;
}
if(cz == 0 || tao == 0)
continue;
similarityValues[make_pair(x,y)] += (double)abs(cz) * pow((double)abs(tao), beta*C);
}
}
}
}
return similarityValues;
}
set<pair<int, int>> predictLinks(string file, double beta, int test_size){
string line, val;
Graph *g = new Graph();
unordered_set<int> vertices;
int FIRST_LINE = 1, EDGES = 1;
ifstream f(file);
while (getline(f,line)) {
if(FIRST_LINE){
stringstream s(line);
int text[2],i=0;
while (getline (s, val, ' ')){
try{
text[i++] = stoi(val);
}
catch(exception e){}
}
g->setV(text[1]);
FIRST_LINE = 0;
continue;
}
if(line != "*edges" && EDGES == 1)
continue;
else if(EDGES == 1){
EDGES = 0;
continue;
}
stringstream s(line);
int edge[3],i=0;
while (getline(s, val, ' ')){
edge[i++] = stoi(val);
}
vertices.insert({edge[0],edge[1]});
g->addEdge(edge[0],edge[1]);
}
double averageClusteringCoeff = g->averageClusteringCoeff();
averageClusteringCoeff = 0.49;
cout << "<C>: " << averageClusteringCoeff << "\n";
map<pair<int, int>, double> similarityValues = g->findSimilarityValues(vertices, averageClusteringCoeff, beta);
map<pair<int, int>, double>::iterator itr;
vector<pair<pair<int,int>, double>> sortedSimilarityValues;
set<pair<int, int>> listed;
for(itr = similarityValues.begin(); itr != similarityValues.end(); ++itr){
sortedSimilarityValues.push_back(make_pair(itr->first, itr->second));
}
sort(sortedSimilarityValues.begin(), sortedSimilarityValues.end(), less_second<pair<int, int>, double>());
set<pair<int, int>> predictedLinks;
for(int i=0; i<sortedSimilarityValues.size() && test_size; i++){
if(find(listed.begin(), listed.end(), sortedSimilarityValues[i].first) != listed.end()){
continue;
}
listed.insert(sortedSimilarityValues[i].first);
listed.insert(make_pair(sortedSimilarityValues[i].first.second, sortedSimilarityValues[i].first.first));
predictedLinks.insert(sortedSimilarityValues[i].first);
test_size--;
}
return predictedLinks;
}