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loss.py
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loss.py
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import numpy as np
import torch
import torch.nn as nn
from torch.autograd import Variable
import math
import torch.nn.functional as F
import pdb
def Entropy(input_):
bs = input_.size(0)
epsilon = 1e-5
entropy = -input_ * torch.log(input_ + epsilon)
entropy = torch.sum(entropy, dim=1)
return entropy
def grl_hook(coeff):
def fun1(grad):
return -coeff*grad.clone()
return fun1
def CDAN(input_list, ad_net, entropy=None, coeff=None, random_layer=None):
softmax_output = input_list[1].detach()
feature = input_list[0]
if random_layer is None:
op_out = torch.bmm(softmax_output.unsqueeze(2), feature.unsqueeze(1))
ad_out = ad_net(op_out.view(-1, softmax_output.size(1) * feature.size(1)))
else:
random_out = random_layer.forward([feature, softmax_output])
ad_out = ad_net(random_out.view(-1, random_out.size(1)))
batch_size = softmax_output.size(0) // 2
dc_target = torch.from_numpy(np.array([[1]] * batch_size + [[0]] * batch_size)).float().cuda()
if entropy is not None:
entropy.register_hook(grl_hook(coeff))
entropy = 1.0+torch.exp(-entropy)
source_mask = torch.ones_like(entropy)
source_mask[feature.size(0)//2:] = 0
source_weight = entropy*source_mask
target_mask = torch.ones_like(entropy)
target_mask[0:feature.size(0)//2] = 0
target_weight = entropy*target_mask
weight = source_weight / torch.sum(source_weight).detach().item() + \
target_weight / torch.sum(target_weight).detach().item()
return torch.sum(weight.view(-1, 1) * nn.BCELoss(reduction='none')(ad_out, dc_target)) / torch.sum(weight).detach().item()
else:
return nn.BCELoss()(ad_out, dc_target)
def DANN(features, ad_net):
ad_out = ad_net(features)
batch_size = ad_out.size(0) // 2
dc_target = torch.from_numpy(np.array([[1]] * batch_size + [[0]] * batch_size)).float().cuda()
return nn.BCELoss()(ad_out, dc_target)