import torch from torch.optim.optimizer import Optimizer, required from torch.autograd import Variable import torch.nn.functional as F from torch import nn from torch import Tensor from torch.nn import Parameter def l2normalize(v, eps=1e-12): return v / (v.norm() + eps) class SpectralNorm(nn.Module): def __init__(self, module, name='weight', power_iterations=1): super(SpectralNorm, self).__init__() self.module = module self.name = name self.power_iterations = power_iterations if not self._made_params(): self._make_params() def _update_u_v(self): u = getattr(self.module, self.name + "_u") v = getattr(self.module, self.name + "_v") w = getattr(self.module, self.name + "_bar") height = w.data.shape[0] for _ in range(self.power_iterations): v.data = l2normalize(torch.mv(torch.t(w.view(height,-1).data), u.data)) u.data = l2normalize(torch.mv(w.view(height,-1).data, v.data)) # sigma = torch.dot(u.data, torch.mv(w.view(height,-1).data, v.data)) sigma = u.dot(w.view(height, -1).mv(v)) setattr(self.module, self.name, w / sigma.expand_as(w)) def _made_params(self): try: u = getattr(self.module, self.name + "_u") v = getattr(self.module, self.name + "_v") w = getattr(self.module, self.name + "_bar") return True except AttributeError: return False def _make_params(self): w = getattr(self.module, self.name) height = w.data.shape[0] width = w.view(height, -1).data.shape[1] u = Parameter(w.data.new(height).normal_(0, 1), requires_grad=False) v = Parameter(w.data.new(width).normal_(0, 1), requires_grad=False) u.data = l2normalize(u.data) v.data = l2normalize(v.data) w_bar = Parameter(w.data) del self.module._parameters[self.name] self.module.register_parameter(self.name + "_u", u) self.module.register_parameter(self.name + "_v", v) self.module.register_parameter(self.name + "_bar", w_bar) def forward(self, *args): self._update_u_v() return self.module.forward(*args)