Ejemplo n.º 1
0
 def test_no_pos(self):
     pos_scores = torch.empty((0, ), requires_grad=True)
     neg_scores = torch.empty((0, 0), requires_grad=True)
     loss_fn = LogisticLossFunction()
     loss = loss_fn(pos_scores, neg_scores)
     self.assertTensorEqual(loss, torch.zeros(()))
     loss.backward()
Ejemplo n.º 2
0
 def test_forward_bad(self):
     pos_scores = torch.full((3, ), -1e9, requires_grad=True)
     neg_scores = torch.full((3, 5), +1e9, requires_grad=True)
     loss_fn = LogisticLossFunction()
     loss = loss_fn(pos_scores, neg_scores)
     self.assertTensorEqual(loss, torch.tensor(6e9))
     loss.backward()
Ejemplo n.º 3
0
 def test_no_neg(self):
     pos_scores = torch.zeros((3, ), requires_grad=True)
     neg_scores = torch.empty((3, 0), requires_grad=True)
     loss_fn = LogisticLossFunction()
     loss = loss_fn(pos_scores, neg_scores, None)
     self.assertTensorEqual(loss, torch.tensor(2.0794))
     loss.backward()
Ejemplo n.º 4
0
 def test_forward(self):
     pos_scores = torch.tensor([0.8181, 0.5700, 0.3506], requires_grad=True)
     neg_scores = torch.tensor([
         [0.4437, 0.6573, 0.9986, 0.2548, 0.0998],
         [0.6175, 0.4061, 0.4582, 0.5382, 0.3126],
         [0.9869, 0.2028, 0.1667, 0.0044, 0.9934],
     ],
                               requires_grad=True)
     loss_fn = LogisticLossFunction()
     loss = loss_fn(pos_scores, neg_scores)
     self.assertTensorEqual(loss, torch.tensor(4.2589))
     loss.backward()
     self.assertTrue((pos_scores.grad != 0).any())
     self.assertTrue((neg_scores.grad != 0).any())