Files
@ 9de2b1d29b5d
Branch filter:
Location: AENC/switchchain/cpp/graph_spectrum.hpp - annotation
9de2b1d29b5d
1.7 KiB
text/x-c++hdr
Add plots for median of triangle counts instead of mean
b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 b8a998539881 | #include "graph.hpp"
#include <Eigen/Dense>
#include <Eigen/Eigenvalues>
using MatrixType =
Eigen::Matrix<float, Eigen::Dynamic, Eigen::Dynamic, Eigen::RowMajor>;
// A: Adjacency matrix
// lambda_max <= d_max
//
// L: Laplacian
// L = D - A
///
// P: Random walk matrix
// lambda_max = 1
class GraphSpectrum {
public:
GraphSpectrum(const Graph& g) : graph(g) {}
~GraphSpectrum() {}
std::vector<float> computeAdjacencySpectrum() const {
// matrix stored as std::vector<std::vector<bool>>
auto& badj = graph.getBooleanAdj();
// Convert it to MatrixType
auto n = badj.size();
MatrixType m(n, n);
for (auto i = 0u; i < n; ++i)
for (auto j = 0u; j < n; ++j)
m(i, j) = badj[i][j] ? 1.0f : 0.0f;
return getEigenvalues_(m);
}
std::vector<float> computeLaplacianSpectrum() const {
// matrix stored as std::vector<std::vector<bool>>
auto& badj = graph.getBooleanAdj();
auto& adj = graph.getAdj();
// - A
auto n = badj.size();
MatrixType m(n, n);
for (auto i = 0u; i < n; ++i)
for (auto j = 0u; j < n; ++j)
m(i, j) = badj[i][j] ? -1.0f : 0.0f;
// + D
for (auto i = 0u; i < n; ++i)
m(i, i) = float(adj[i].size());
return getEigenvalues_(m);
}
private:
const Graph& graph;
std::vector<float> getEigenvalues_(const MatrixType& m) const {
Eigen::SelfAdjointEigenSolver<MatrixType> es(
m, Eigen::DecompositionOptions::EigenvaluesOnly);
auto ev = es.eigenvalues();
return std::vector<float>(ev.data(), ev.data() + ev.rows() * ev.cols());
}
};
|