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Simple Nonnegative Matrix Factorization in Pytorch
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import numpy as np | |
import torch | |
import matplotlib.pyplot as plt | |
from torch_nonneg_linesearch import nonneg_projected_gradient_step | |
# Data dimensions | |
m, n = 100, 101 | |
rank = 3 | |
# Data matrix, detached from the graph. | |
X = torch.rand(m, rank) @ torch.rand(rank, n) | |
# Initialize factor matrices. | |
W = torch.rand(rank, m, requires_grad=True) | |
H = torch.rand(rank, n, requires_grad=True) | |
# Setup optimization | |
losses = [] | |
num_iters = 100 | |
inner_iters = 2 | |
learning_rate_multiplier = 2.0 # Set near 1.0 | |
# Define loss for H parameter. | |
def loss_H(): | |
return ( | |
-2 * torch.sum(WX * H) + | |
torch.sum(WWt * (H @ H.T)) | |
) | |
# Define loss for W parameter. | |
def loss_W(): | |
return ( | |
-2 * torch.sum(W.T * XHt) + | |
torch.sum(HHt * (W @ W.T)) | |
) | |
# Holds copies of the params, detached from graph. | |
W_ = torch.empty_like(W) | |
H_ = torch.empty_like(H) | |
# Main loop. | |
for itr in range(num_iters): | |
# === UPDATE H === # | |
# Cached matrix products. Note that these don't require | |
# gradients, so we detach W from the graph. | |
W_.copy_(W.data) | |
WWt = W_ @ W_.T | |
WX = W_ @ X | |
# This is an upper bound on the Lipshitz constant for the | |
# objective function. | |
learning_rate = learning_rate_multiplier / WWt.sum(axis=0).max() | |
for j in range(inner_iters + 1): | |
losses.append(nonneg_projected_gradient_step( | |
loss_H, H, H_, learning_rate | |
)) | |
# === UPDATE W === # | |
# Cached matrix products. Note that these | |
# don't require gradient tracking. | |
H_.copy_(H.data) | |
HHt = H_ @ H_.T | |
XHt = X @ H_.T | |
learning_rate = learning_rate_multiplier / WWt.sum(axis=0).max() | |
for j in range(inner_iters + 1): | |
losses.append(nonneg_projected_gradient_step( | |
loss_W, W, W_, learning_rate | |
)) | |
# Print final loss. | |
print(f"Converged to within {100 *(torch.norm(X - W.T @ H) / torch.norm(X)).item():0.2f}% of the solution") | |
# Plot result. | |
fig, ax = plt.subplots(1, 1) | |
ax.plot(losses) | |
ax.set_ylabel("NMF loss") | |
plt.show() |
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import torch | |
TOL = 1e-6 | |
def nonneg_projected_gradient_step( | |
evaluate_loss, param, init_param, learning_rate, maxsteps=10, shrink_rate=0.5 | |
): | |
# Evaluate initial loss, compute gradient. | |
init_loss = evaluate_loss() | |
init_loss.backward() | |
init_loss = init_loss.item() | |
# Take initial step. | |
with torch.no_grad(): | |
init_param.copy_(param.data) | |
param.grad.mul_(learning_rate) | |
param.sub_(param.grad) | |
param.relu_() | |
for step in range(maxsteps): | |
# Evaluate new loss. | |
with torch.no_grad(): | |
loss = evaluate_loss() | |
# Return if we've descended. | |
if ((init_loss - loss.item()) / init_loss) < TOL: | |
return loss.item() | |
# Otherwise, backtrack param | |
with torch.no_grad(): | |
# Restore initial param | |
param.copy_(init_param) | |
# Shrink the descent vector held in param.grad | |
param.grad.mul_(shrink_rate) | |
# Take a projected gradient step. | |
param.sub_(param.grad) | |
param.relu_() | |
raise ValueError("Line search failed!") |
Author
ahwillia
commented
Mar 25, 2021
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