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  πŸ€– **Model description**
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- This model was trained on ~25k heterogeneous manually annotated sentences (πŸ“š Stab et al. 2018) of controversial topics to classify text into one of two labels: 🏷 **NON-ARGUMENT** (0) and **ARGUMENT** (1).
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  πŸ—ƒ **Dataset**
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- The dataset (πŸ“š Stab et al. 2018) consists of **ARGUMENTS** (\~11k) that either support or oppose a topic if it includes a relevant reason for supporting or opposing the topic, or as a **NON-ARGUMENT** (\~14k) if it does not include reasons. The authors focus on controversial topics, i.e., topics that include an obvious polarity to the possible outcomes and compile a final set of eight controversial topics: _abortion, school uniforms, death penalty, marijuana legalization, nuclear energy, cloning, gun control, and minimum wage_.
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  | TOPIC | ARGUMENT | NON-ARGUMENT |
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  The model can be a starting point to dive into the exciting area of argument mining. But be aware. An argument is a complex structure, topic-dependent, and often differs between different text types. Therefore, the model may perform less well on different topics and text types, which are not included in the training set.
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- Enjoy and stay tuned! πŸš€
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- πŸ“šStab et al. (2018): Cross-topic Argument Mining from Heterogeneous Sources. [LINK](https://www.aclweb.org/anthology/D18-1402/).
 
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  πŸ€– **Model description**
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+ This model was trained on ~25k heterogeneous manually annotated sentences (πŸ“š [Stab et al. 2018](https://www.aclweb.org/anthology/D18-1402/)) of controversial topics to classify text into one of two labels: 🏷 **NON-ARGUMENT** (0) and **ARGUMENT** (1).
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  πŸ—ƒ **Dataset**
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+ The dataset (πŸ“š Stab et al. 2018) consists of **ARGUMENTS** (\\~11k) that either support or oppose a topic if it includes a relevant reason for supporting or opposing the topic, or as a **NON-ARGUMENT** (\\~14k) if it does not include reasons. The authors focus on controversial topics, i.e., topics that include an obvious polarity to the possible outcomes and compile a final set of eight controversial topics: _abortion, school uniforms, death penalty, marijuana legalization, nuclear energy, cloning, gun control, and minimum wage_.
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  | TOPIC | ARGUMENT | NON-ARGUMENT |
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  |----|----|----|
 
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  The model can be a starting point to dive into the exciting area of argument mining. But be aware. An argument is a complex structure, topic-dependent, and often differs between different text types. Therefore, the model may perform less well on different topics and text types, which are not included in the training set.
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+ Enjoy and stay tuned! πŸš€