I am working on Multiclass Classification (4 classes) for Language Task and I am using the BERT model for classification task. I am following this blog as reference. **My BERT Fine Tuned model returns nn.LogSoftmax(dim=1).**

My data is pretty imbalanced so I used `sklearn.utils.class_weight.compute_class_weight`

to compute weights of the classes and used the weights inside the Loss.

```
class_weights = compute_class_weight('balanced', np.unique(train_labels), train_labels)
weights= torch.tensor(class_weights,dtype=torch.float)
cross_entropy = nn.NLLLoss(weight=weights)
```

My results were not so good so I thought of Experementing with `Focal Loss`

and have a code for Focal Loss.

```
class FocalLoss(nn.Module):
def __init__(self, alpha=1, gamma=2, logits=False, reduce=True):
super(FocalLoss, self).__init__()
self.alpha = alpha
self.gamma = gamma
self.logits = logits
self.reduce = reduce
def forward(self, inputs, targets):
BCE_loss = nn.CrossEntropyLoss()(inputs, targets)
pt = torch.exp(-BCE_loss)
F_loss = self.alpha * (1-pt)**self.gamma * BCE_loss
if self.reduce:
return torch.mean(F_loss)
else:
return F_loss
```

I have 3 questions now. First and the Most important is

**Should I use Class Weight with Focal Loss?****If I have to Implement weights inside this**`Focal Loss`

, can I use`weights`

parameters inside`nn.CrossEntropyLoss()`

- If this implement is incorrect, what should be the proper code for this one including the weights (if possible)

`compute_class_weight('balanced', np.unique(train_labels), train_labels)`

`balanced`

means assigning the class weight according to the Number of samples present per class? Isn't it? As given in this documentationIf ‘balanced’, class weights will be given by n_samples / (n_classes * np.bincount(y)).