Esempio n. 1
0
void KMplex::initialise(KEY& T, KEY& S)
{
    if(T.size() <= 2)
    {
        greedy(T, S);
        return;
    }

    KEY::iterator a;
    KEY::iterator b;
    double dab = 0.0;

    for(KEY::iterator t = T.begin(); t != T.end(); ++t)
        for(KEY::iterator tt = t + 1; tt != T.end(); ++tt)
        {
            if(D_[*t][*tt] > dab)
            {
                dab = D_[*t][*tt];
                a = t;
                b = tt;
            }
        }

    // Copy object indices a and b into sample key S
    S.push_back(*a);
    S.push_back(*b);

    // Remove object indices from key T
    T.erase(b);
    T.erase(a);
}
Esempio n. 2
0
// Returns list of key values of x NOT in y (i.e. set_difference)
const KEY difference(const KEY& x, const KEY& y)
{
    KEY difference;
    KEY::const_iterator xi = x.begin(), yi = y.begin();
    for(; xi != x.end(); ++xi)
    {
        if(*xi == *yi) // Found yi in x, move to next yi to look for;
            ++yi;
        else 
            difference.push_back(*xi);     
    }
    return difference;
}
Esempio n. 3
0
void KMplex::resample()
{
    std::cout << "KMplex::resample" << std::endl;

    // Build dissimilarity matrix for clustered data X
    const MATRIX& X(*(kmeans_->X_));
    D_.resize(X.rows(), X.rows());

    std::cout << "\nKMplex: (Allocation rule: "
              << (unsigned)alloc_ << ")" << std::endl;
    for(unsigned i = 0; i < kmeans_->K(); ++i)
    {
        const KMeans::Cluster& cluster(kmeans_->cluster(i));

        if(cluster.size() > 0)
        {
            unsigned NTr = trainingQuota(cluster);
            unsigned NTe = testingQuota(cluster);
            unsigned NVa = validatingQuota(cluster);

            std::cout << "Cluster (" << i << ") N: " << cluster.size() <<
                      " NTr: " << NTr <<
                      " NTe: " << NTe <<
                      " NVa: " << NVa << std::endl;

            // Calculate intra-cluster distances
            KEY indices = kmeans_->cluster(i).indices();
            for(KEY::iterator a = indices.begin(); a != indices.end(); ++a)
                for(KEY::iterator b = a + 1; b != indices.end(); ++b)
                {
                    D_[*a][*b] = euclidean(X[*a], X[*b]);
                    D_[*b][*a] = D_[*a][*b];
                }

            // Initialise samples
            KEY training, testing, validating;
            if(NTr > 0)
                initialise(indices, training);

            if(NTe > 0)
                initialise(indices, testing);

            if(NVa > 0)
                initialise(indices, validating);

            // Sample remaining points using Duplex sampling
            while(indices.size() > 0)
            {
                if(training.size() < NTr)
                    sample(indices, training);

                if(testing.size() < NTe)
                    sample(indices, testing);

                if(validating.size() < NVa)
                    sample(indices, validating);
            }

            // Add intra-cluster samples to respective global samples
            if(training.size() > 0)
                merge(training, trainingKey_);

            if(testing.size() > 0)
                merge(testing, testingKey_);

            if(validating.size() > 0)
                merge(validating, validatingKey_);
        }
    }

    allocate(trainingKey_, training_);
    allocate(testingKey_, testing_);
    allocate(validatingKey_, validating_);
}
Esempio n. 4
0
void KMplex::sample(KEY& T, KEY& S)
{
    if(T.size() <= 2)
    {
        greedy(T, S);
        return;
    }
    // NOTE: Cannot sample for two or less data, so copy any data to S

    // Indices of points a and b
    KEY::iterator a;
    KEY::iterator b;

    // Corresponding distances to points a and b, from c(S)
    double da = 0.0;
    double db = 0.0;
    for(KEY::iterator t = T.begin(); t != T.end(); ++t)
    {
        // Find shortest distance d(t,s)
        double d = large();
        for(KEY::iterator s = S.begin(); s != S.end(); ++s)
        {
            if(D_[*t][*s] < d)
                d = D_[*t][*s];
        }

        // Retain t if corresponds to first or second farthest from S
        if(d >= da)
        {
            b = a;		// Farthest object moves to second farthest
            db = da;
            a = t;		// New object t is farthest from s in S
            da = d;
        }
        else if(d >= db)	// New object t is second farthest from s in S
        {
            b = t;
            db = d;
        }
        else
        {
            ; 			// Do nothing
        }
    }

    // Indices a and b are moved to sample, S
    S.push_back(*a);
    S.push_back(*b);

    // Erase items a and b, starting with last in sequence
    if(a > b)
    {
        T.erase(a);
        T.erase(b);
    }
    else
    {
        T.erase(b);
        T.erase(a);
    }
}
Esempio n. 5
0
void KMplex::merge(KEY& S, KEY& T)
{
    for(KEY::iterator s = S.begin(); s != S.end(); ++s)
        T.push_back(*s);
}