I'm trying to use transformer's huggingface pretrained model bert-base-uncased, but I want to increace dropout. There isn't any mention to this in from_pretrained method, but colab ran the object instantiation below without any problem. I saw these dropout parameters in classtransformers.BertConfig documentation.

Am I using bert-base-uncased AND changing dropout in the correct way?

model = BertForSequenceClassification.from_pretrained(
        output_attentions = False,
        output_hidden_states = False,

3 Answers 3


As Elidor00 already said it, your assumption is correct. Similarly I would suggest using a separated Config because it is easier to export and less prone to cause errors. Additionally someone in the comments ask how to use it via from_pretrained:

from transformers import BertModel, AutoConfig

configuration = AutoConfig.from_pretrained('bert-base-uncased')
configuration.hidden_dropout_prob = 0.5
configuration.attention_probs_dropout_prob = 0.5
bert_model = BertModel.from_pretrained(pretrained_model_name_or_path = 'bert-base-uncased', 
config = configuration)

Yes this is correct, but note that there are two dropout parameters and that you are using a specific Bert model, that is BertForSequenceClassification.

Also as suggested by the documentation you could first define the configuration and then the way in the following way:

from transformers import BertModel, BertConfig

# Initializing a BERT bert-base-uncased style configuration
configuration = BertConfig()

# Initializing a model from the bert-base-uncased style configuration
model = BertModel(configuration)

# Accessing the model configuration
configuration = model.config
  • how does it work with the from_pretrained() function? Apr 18, 2021 at 8:56
  • I recommend you to see this example to understand how it works. A simple example of token classification made with bert
    – Elidor00
    Apr 18, 2021 at 15:07
  • maybe you can change your answer to include a working example that answers OP question with your suggested config solution (Personally I tried passing a config to the from_pretrained function and had some problems, but maybe I was doing it wrong) Apr 18, 2021 at 15:12
  • 1
    The answer on how to use from_pretrained() for config, model and tokenizer can be found in the link I sent, exactly here. In case you are not clear about something, I advise you to ask a new question: explain your problem well and insert the code you are using, otherwise it is very difficult to be able to help you.
    – Elidor00
    Apr 18, 2021 at 15:18

What you did is just fine, but for the classifiers layer we have another parameter that is needed to set called classifier_dropout. In case you don't specify that, it will use the hidden_dropout_prob as fallback value.

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