--- license: cc-by-nc-4.0 language: - en metrics: - f1 pipeline_tag: text-classification tags: - transformers - argument-mining - opinion-mining - information-extraction - inference-extraction - Twitter widget: - text: 'Men shouldn’t be making laws about women’s bodies #abortion #Texas' example_title: Statement - text: >- ’Bitter truth’: EU chief pours cold water on idea of Brits keeping EU citizenship after #Brexit HTTPURL via @USER example_title: Notification - text: >- Opinion: As the draconian (and then some) abortion law takes effect in #Texas, this is not an idle question for millions of Americans. A slippery slope towards more like-minded Republican state legislatures to try to follow suit. #abortion #F24 HTTPURL example_title: Reason - text: '@USER Blah blah blah blah blah blah' example_title: None - text: republican men and karens make me sick example_title: Unlabeled 1 - text: No empire lives forever! Historical fact! GodWins! 🙏💪🇺🇲 example_title: Unlabeled 2 - text: >- Further author information regarding registration and visa support letters will be sent to the authors soon. #CIKM2023 example_title: Unlabeled 3 - text: Ummmmmm example_title: Unlabeled 4 - text: >- whoever says that The Last Jedi is a good movie is lying or trolling everyone example_title: Unlabeled 5 - text: >- I don’t think people realize how big this story is GBI Strategies, the group paid $11M+ by Biden PACs to harvest fraudulent voter registrations in *20 states*, may be the root source of Democrat election rigging @USER may have just exposed their entire fraud machine HTTPURL example_tite: Unlabeled 6 base_model: - vinai/bertweet-base --- # TACO -- Twitter Arguments from COnversations Introducing TACO, a baseline classification model built upon `AutoModelForSequenceClassification`, designed to identify tweets belonging to four distinct classes: Reason, Statement, Notification, and None. Tailored specifically for argument mining on Twitter, this baseline model is an evolution of the [BERTweet-base](https://huggingface.co/vinai/bertweet-base) architecture, which was originally pre-trained on Twitter data. Through fine-tuning with the [TACO dataset](https://github.com/TomatenMarc/TACO), the baseline model acquires its name and excels in the extraction of *Twitter Arguments from COnversations*. ## Class Semantics The TACO framework revolves around the two key elements of an argument, as defined by the [Cambridge Dictionary](https://dictionary.cambridge.org). It encodes *inference* as *a guess that you make or an opinion that you form based on the information that you have*, and it also leverages the definition of *information* as *facts or details about a person, company, product, etc.*. Taken together, the following classes of tweets can be identified by TACO: * *Statement*, which refers to unique cases where only the *inference* is presented as *something that someone says or writes officially, or an action done to express an opinion*. * *Reason*, which represents a full argument where the *inference* is based on direct *information* mentioned in the tweet, such as a source-reference or quotation, and thus reveals the author’s motivation *to try to understand and to make judgments based on practical facts*. * *Notification*, which refers to a tweet that limits itself to providing *information*, such as media channels promoting their latest articles. * *None*, a tweet that provides neither *inference* nor *information*. In its entirety, TACO can classify the following hierarchy for tweets:
Argument Tree
## Usage Using this model becomes easy when you have `transformers` installed: ```python pip install - U transformers ``` Then you can use the model to generate tweet classifications like this: ```python from transformers import pipeline pipe = pipeline("text-classification", model="TomatenMarc/TACO") prediction = pipe("Huggingface is awesome") print(prediction) ```
Notice: The tweets need to undergo preprocessing before classification.
## Training The final model underwent training using the entire shuffled ground truth dataset known as TACO, encompassing a total of 1734 tweets. This dataset showcases the distribution of topics as: #abortion (25.9%), #brexit (29.0%), #got (11.0%), #lotrrop (12.1%), #squidgame (12.7%), and #twittertakeover (9.3%). For training, we utilized [SimpleTransformers](https://simpletransformers.ai). Additionally, the category and class distribution of the dataset TACO is as follows: | Argument | No-Argument | |--------------|------------------| | 865 (49.88%) | 869 (50.12%) | | Reason | Statement | Notification | None | |--------------|--------------|--------------|--------------| | 581 (33.50%) | 284 (16.38%) | 500 (28.84%) | 369 (21.28%) |

Notice: Our training involved TACO to forecast class predictions, where the categories (Argument/No-Argument) represent class aggregations based on the inference component.

### Dataloader ``` "data_loader": { "type": "torch.utils.data.dataloader.DataLoader", "args": { "batch_size": 8, "sampler": "torch.utils.data.sampler.RandomSampler" } } ``` Parameters of the fit()-Method: ``` { "epochs": 5, "max_grad_norm": 1, "optimizer_class": "", "optimizer_params": { "lr": 4e-05 }, "scheduler": "WarmupLinear", "warmup_steps": 66, "weight_decay": 0.06 } ``` ## Evaluation We utilized a stratified 10-fold cross-validation approach to present TACO's performance. In doing so, we employed the identical data and parameters as outlined in the *Training* section. This involved training on k-1 splits and utilizing the kth split for making predictions. In total, the TACO classifier performs as follows: ### Classification | | Precision | Recall | F1-Score | Support | |-------------|-----------|---------|----------|---------| | Reason | 73.69% | 75.22% | 74.45% | 581 | | Statement | 54.37% | 59.15% | 56.66% | 284 | | Notification| 79.02% | 77.60% | 78.30% | 500 | | None | 83.87% | 77.51% | 80.56% | 369 | |-------------|-----------|---------|----------|---------| | Accuracy | | | 73.76% | 1734 | | Macro Avg | 72.74% | 72.37% | 72.49% | 1734 | | Weighted Avg| 74.23% | 73.76% | 73.95% | 1734 | ### Categorization | | Precision | Recall | F1-Score | Support | |-------------|-----------|---------|----------|---------| | No-Argument | 86.66% | 82.97% | 84.77% | 869 | | Argument | 83.59% | 87.17% | 85.34% | 865 | |-------------|-----------|---------|----------|---------| | Accuracy | | | 85.06% | 1734 | | Macro Avg | 85.13% | 85.07% | 85.06% | 1734 | | Weighted Avg| 85.13% | 85.06% | 85.06% | 1734 | # Environmental Impact - **Hardware Type:** A100 PCIe 40GB - **Hours used:** 10 min - **Cloud Provider:** [Google Cloud Platform](https://colab.research.google.com) - **Compute Region:** [asia-southeast1](https://cloud.google.com/compute/docs/gpus/gpu-regions-zones?hl=en) (Singapore) - **Carbon Emitted:** 0.02kg CO2 # Licensing [TACO](https://huggingface.co/TomatenMarc/TACO) © 2023 is licensed under [CC BY-NC-SA 4.0](https://creativecommons.org/licenses/by-nc-sa/4.0/?ref=chooser-v1) # Citation ``` @inproceedings{feger-dietze-2024-taco, title = "{TACO} {--} {T}witter Arguments from {CO}nversations", author = "Feger, Marc and Dietze, Stefan", editor = "Calzolari, Nicoletta and Kan, Min-Yen and Hoste, Veronique and Lenci, Alessandro and Sakti, Sakriani and Xue, Nianwen", booktitle = "Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)", month = may, year = "2024", address = "Torino, Italia", publisher = "ELRA and ICCL", url = "https://aclanthology.org/2024.lrec-main.1349", pages = "15522--15529" } ```