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-rw-r--r--langevin.cpp12
1 files changed, 6 insertions, 6 deletions
diff --git a/langevin.cpp b/langevin.cpp
index e5ed0b8..fa737cf 100644
--- a/langevin.cpp
+++ b/langevin.cpp
@@ -31,7 +31,7 @@ Vector randomVector(unsigned N, Distribution d, Generator& r) {
return z;
}
-std::tuple<double, Vector> gradientDescent(const Tensor& J, const Vector& z0, double γ0, double ε) {
+std::tuple<double, Vector> gradientDescent(const Tensor& J, const Vector& z0, double ε, double γ0 = 1, double δγ = 2) {
Vector z = z0;
double W;
@@ -53,7 +53,7 @@ std::tuple<double, Vector> gradientDescent(const Tensor& J, const Vector& z0, do
dW = dWNew;
γ = γ0;
} else { // Otherwise, shrink the step and try again.
- γ *= 0.5;
+ γ /= δγ;
}
if (γ < 1e-15) {
@@ -65,7 +65,7 @@ std::tuple<double, Vector> gradientDescent(const Tensor& J, const Vector& z0, do
return {W, z};
}
-Vector findSaddle(const Tensor& J, const Vector& z0, double ε, double δW, double γ0) {
+Vector findSaddle(const Tensor& J, const Vector& z0, double ε, double δW = 2, double γ0 = 1, double δγ = 2) {
double W;
std::tie(W, std::ignore) = WdW(J, z0);
@@ -91,7 +91,7 @@ Vector findSaddle(const Tensor& J, const Vector& z0, double ε, double δW, doub
z = zNew;
W = WNew;
} else { // Otherwise, do gradient descent until W is a factor δW smaller.
- std::tie(W, z) = gradientDescent(J, z, γ0, W / δW);
+ std::tie(W, z) = gradientDescent(J, z, W / δW, γ0, δγ);
ζ = euclideanToStereographic(z);
}
@@ -186,13 +186,13 @@ int main(int argc, char* argv[]) {
Tensor J = generateCouplings<Scalar, PSPIN_P>(N, complex_normal_distribution<>(0, σ, κ), r.engine());
Vector z0 = normalize(randomVector(N, complex_normal_distribution<>(0, 1, 0), r.engine()));
- Vector zSaddle = findSaddle(J, z0, ε, δ, γ);
+ Vector zSaddle = findSaddle(J, z0, ε);
double W;
Vector z = zSaddle;
for (unsigned i = 0; i < n; i++) {
std::tie(W, z) = langevin(J, z, T, γ, M, r);
- Vector zNewSaddle = findSaddle(J, z, ε, δ, γ);
+ Vector zNewSaddle = findSaddle(J, z, ε);
Scalar H;
Matrix ddH;
std::tie(H, std::ignore, ddH) = hamGradHess(J, zNewSaddle);