GPy/GPy/testing/test_svgp.py
2023-10-16 08:20:32 +02:00

63 lines
1.8 KiB
Python

import numpy as np
import GPy
class TestSVGP_nonconvex:
"""
Inference in the SVGP with a student-T likelihood
"""
def setup(self):
X = np.linspace(0, 10, 100).reshape(-1, 1)
Z = np.linspace(0, 10, 10).reshape(-1, 1)
Y = np.sin(X) + np.random.randn(*X.shape) * 0.1
Y[50] += 3
lik = GPy.likelihoods.StudentT(deg_free=2)
k = GPy.kern.RBF(1, lengthscale=5.0) + GPy.kern.White(1, 1e-6)
self.m = GPy.core.SVGP(X, Y, Z=Z, likelihood=lik, kernel=k)
def test_grad(self):
self.setup()
assert self.m.checkgrad(step=1e-4)
class TestSVGP_classification:
"""
Inference in the SVGP with a Bernoulli likelihood
"""
def setup(self):
X = np.linspace(0, 10, 100).reshape(-1, 1)
Z = np.linspace(0, 10, 10).reshape(-1, 1)
Y = np.where((np.sin(X) + np.random.randn(*X.shape) * 0.1) > 0, 1, 0)
lik = GPy.likelihoods.Bernoulli()
k = GPy.kern.RBF(1, lengthscale=5.0) + GPy.kern.White(1, 1e-6)
self.m = GPy.core.SVGP(X, Y, Z=Z, likelihood=lik, kernel=k)
def test_grad(self):
self.setup()
assert self.m.checkgrad(step=1e-4)
class TestSVGP_Poisson_with_meanfunction:
"""
Inference in the SVGP with a Bernoulli likelihood
"""
def setup(self):
X = np.linspace(0, 10, 100).reshape(-1, 1)
Z = np.linspace(0, 10, 10).reshape(-1, 1)
latent_f = np.exp(0.1 * X * 0.05 * X**2)
Y = np.array([np.random.poisson(f) for f in latent_f.flatten()]).reshape(-1, 1)
mf = GPy.mappings.Linear(1, 1)
lik = GPy.likelihoods.Poisson()
k = GPy.kern.RBF(1, lengthscale=5.0) + GPy.kern.White(1, 1e-6)
self.m = GPy.core.SVGP(X, Y, Z=Z, likelihood=lik, kernel=k, mean_function=mf)
def test_grad(self):
self.setup()
assert self.m.checkgrad(step=1e-4)