Created
February 28, 2023 15:59
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using AbstractGPs, KernelFunctions | |
# Generate toy data. | |
num_dims_in = 5 | |
num_dims_out = 4 | |
num_obs = 100 | |
X = randn(num_obs, num_dims_in) | |
Y = randn(num_obs, num_dims_out) | |
# Convert to format required for AbstractGPs / KernelFunctions. | |
# See docstrings for more info. This is basically a no-op. | |
x, y = prepare_isotopic_multi_output_data(RowVecs(X), RowVecs(Y)) | |
# Construct multi-output model. | |
f = GP(LinearMixingModelKernel([SEKernel(), Matern52Kernel()], randn(2, num_dims_out))) | |
# Do the usual things that you would do with a single-output GP. | |
fx = f(x, 0.5) | |
logpdf(fx, y) | |
y_from_prior = rand(fx) | |
# Do inference. | |
f_post = posterior(fx, y_from_prior) | |
# Compute posterior mean. | |
# length num_obs * num_dims_out. First num_obs elements correspond to first output at all | |
# inputs in `x`, second num_obs elements to the second output at all inputs in `x`, etc. | |
m = mean(f_post(x)) | |
# Matrix-form. Same structure as Y. You can tell this is correct by comparing with | |
# reshape(x, :, num_dims_out), and checking that the output-index in each column | |
# is constant. | |
M = reshape(m, :, num_dims_out) |
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