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README.md
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Welcome to **RoBERTArg**!
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π€ **Model description
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This model was trained on ~40k heterogeneous manually annotated sentences (π Stab et al. 2018) of controversial topics (abortion etc.) to classify text into one of two labels: π· **NON-ARGUMENT** (0) and **ARGUMENT** (1).
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**Dataset**
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**Evaluation**
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The model was evaluated using 20% of the sentences (80-20 train-test split).
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| Model | Acc | F1 | R arg | R non | P arg | P non |
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| NON-ARGUMENT | 325 | 1790 |
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**Intended Uses & Potential Limitations**
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The model can be a practical starting point to the complex topic **Argument Mining**. It is a quite challenging task due to the different conceptions of an argument.
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This model is a part of an open-source project providing several models to detect arguments in text.
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Welcome to **RoBERTArg**!
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+
π€ **Model description**
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+
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This model was trained on ~40k heterogeneous manually annotated sentences (π Stab et al. 2018) of controversial topics (abortion etc.) to classify text into one of two labels: π· **NON-ARGUMENT** (0) and **ARGUMENT** (1).
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**Dataset**
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```
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**Evaluation**
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The model was evaluated using 20% of the sentences (80-20 train-test split).
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| Model | Acc | F1 | R arg | R non | P arg | P non |
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| NON-ARGUMENT | 325 | 1790 |
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**Intended Uses & Potential Limitations**
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The model can be a practical starting point to the complex topic **Argument Mining**. It is a quite challenging task due to the different conceptions of an argument.
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45 |
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This model is a part of an open-source project providing several models to detect arguments in text.
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