--- license: mit --- # diwank/silicone-deberta-pair `deberta-base`-based dialog acts classifier. Trained on the `balanced` variant of the [silicone-merged](https://huggingface.co/datasets/diwank/silicone-merged) dataset: a simplified merged dialog act data from datasets in the [silicone](https://huggingface.co/datasets/silicone) collection. Takes two sentences as inputs (one previous and one current utterance of a dialog). The previous sentence can be an empty string if this is the first utterance of a speaker in a dialog. **Outputs one of 11 labels**: ```python (0, 'acknowledge') (1, 'answer') (2, 'backchannel') (3, 'reply_yes') (4, 'exclaim') (5, 'say') (6, 'reply_no') (7, 'hold') (8, 'ask') (9, 'intent') (10, 'ask_yes_no') ``` ## Example: ```python from simpletransformers.classification import ( ClassificationModel, ClassificationArgs ) model = ClassificationModel("deberta", "diwank/silicone-deberta-pair") convert_to_label = lambda n: [ ['acknowledge', 'answer', 'backchannel', 'reply_yes', 'exclaim', 'say', 'reply_no', 'hold', 'ask', 'intent', 'ask_yes_no' ][i] for i in n ] predictions, raw_outputs = model.predict([["Say what is the meaning of life?", "I dont know"]]) convert_to_label(predictions) # answer ``` ## Report from W&B https://wandb.ai/diwank/da-silicone-combined/reports/silicone-deberta-pair--VmlldzoxNTczNjE5?accessToken=yj1jz4c365z0y5b3olgzye7qgsl7qv9lxvqhmfhtb6300hql6veqa5xiq1skn8ys