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model = AutoAdapterModel.from_pretrained("facebook/bart-base")
config = AdapterConfig.load("houlsby", non_linearity="swish", reduction_factor=16)
model.load_adapter("sts/sts-b@ukp", config=config)

Description

Adapter for bart-base in Houlsby architecture trained on the STS-B dataset for 15 epochs with early stopping and a learning rate of 1e-4.

Properties

Pre-trained model
facebook/bart-base
Adapter type
Prediction Head
  Yes
Task
Semantic Textual Similarity
Dataset

Architecture

Name
houlsby
Non-linearity
swish
Reduction factor
16
{
  "ln_after": false,
  "ln_before": false,
  "mh_adapter": true,
  "output_adapter": true,
  "adapter_residual_before_ln": false,
  "non_linearity": "swish",
  "original_ln_after": true,
  "original_ln_before": false,
  "reduction_factor": 16,
  "residual_before_ln": true
}

Author

  Name
Clifton Poth
  E-Mail
  GitHub
  Twitter

Versions

Identifier Comment Score Download
1 DEFAULT

Citations

Architecture
@misc{houlsby2019parameterefficient,
  title={Parameter-Efficient Transfer Learning for NLP},
  author={Neil Houlsby and Andrei Giurgiu and Stanislaw Jastrzebski and Bruna Morrone and Quentin de Laroussilhe and Andrea Gesmundo and Mona Attariyan and Sylvain Gelly},
  year={2019},
  eprint={1902.00751},
  archivePrefix={arXiv},
  primaryClass={cs.LG}
}
Task
@article{cer2017semeval,
  title={Semeval-2017 task 1: Semantic textual similarity-multilingual and cross-lingual focused evaluation},
  author={Cer, Daniel and Diab, Mona and Agirre, Eneko and Lopez-Gazpio, Inigo and Specia, Lucia},
  journal={arXiv preprint arXiv:1708.00055},
  year={2017}
}