--- language: it license: cc-by-sa-4.0 multilinguality: monolingual task_categories: - token-classification tags: - Factuality Detection - Modality Detection --- # ModaFact - Dataset ## Dataset Description ### Dataset Summary ModaFact is a textual dataset annotated with Event Factuality and Modality in Italian. ModaFact’s goal is to model in a joint way factuality and modality values of event-denoting expressions in text. ### Textual data source Original texts (sentences) have been sampled from [EventNet-ITA](https://huggingface.co/mrovera/eventnet-ita), a dataset for Frame Parsing, consisting of annotated sentences from Wikipedia. ### Statistics | Feature | # | | :--- | ----: | | Sentences | 3,039| | Words | 73,784 | | Annotations| 10,445 | | Unique label assignments |33,029| | Words per sentence (avg.) |24.28| | Annotations per sentence (avg.) | 3.44| |Unique label assignments per sentence |10.87| ### Annotation ModaFact has been originally annotated at token level, adopting the IOB2 style. Whereas for Modality the schema is unique, for Factuality we provide two representations: a fine-grained representation (FG), which specifies values over three axes (CERTAINTY, POLARITY, TIME), and a coarse-grained representation (CG), which only provides the final factuality value. Example of **fine-grained representation (FG)**: ``` Per O chiarire B-POSSIBLE-POS-FUTURE-FINAL la O questione O la O Santa O Sede O autorizzò B-CERTAIN-POS-PRESENT/PAST il O prelievo B-UNDERSPECIFIED-POS-FUTURE-CONCESSIVE di O campioni O del O legno O che O vennero O datati B-CERTAIN-POS-PRESENT/PAST attraverso O l' O utilizzo B-CERTAIN-POS-PRESENT/PAST del O metodo O del O carbonio-14 O . O ``` Example of **coarse-grained representation (CG)**: ``` Per O chiarire B-NON_FACTUAL-FINAL la O questione O la O Santa O Sede O autorizzò B-FACTUAL il O prelievo B-NON_FACTUAL-CONCESSIVE di O campioni O del O legno O che O vennero O datati B-FACTUAL attraverso O l' O utilizzo B-FACTUAL del O metodo O del O carbonio-14 O . O ``` #### Labelset Factuality: - Fine-grained - CERTAINTY: {`CERTAIN`, `PROBABLE`, `POSSIBLE`, `UNDERSPECIFIED`} - POLARITY: {`POSITIVE`, `NEGATIVE`, `UNDERSPECIFIED`} - TIME: {`PRESENT/PAST`, `FUTURE`, `UNDERSPECIFIED`} - Coarse-grained - {`FACTUAL`, `NON-FACTUAL`, `COUNTERFACTUAL`, `UNDERSPECIFIED`} Modality: - {`WILL`, `FINAL`, `CONCESSIVE`, `POSSIBILITY`, `CAPABILITY`, `DUTY`, `COERCION`, `EXHORTATIVE`, `COMMITMENT`, `DECISION`} ### Data format According to the experimental set presented in the paper (see below, Citation Information) we provide different data formats: - **token-level BIO sequence labelling**: the dataset is formatted as a two-column `tsv`. The first column contains the token, the second column contains all corresponding labels (factuality and modality), concatenated with `-`. This format makes the dataset ready-to-train with the MaChAmp [seq_bio](https://github.com/machamp-nlp/machamp/blob/master/docs/seq_bio.md) task type. - **token-level multi-task sequence labelling**: the dataset is formatted as a three-column `tsv`. The first column contains the token, the second column contains all factuality labels, the third column contains the modality label. This format makes the dataset ready-to-train with the Machamp seq_bio **multitask** setting. - **generative and sequence-to-sequence**: the dataset is formatted as a `jsonl` file, containing a list of dictionaries. Each dictionary has an *Input* field (the sentence) and an *Output* field, a string composed by *token=labels* pairs, separated by `|`. This format makes the dataset ready-to train with sequence-to-sequence and causal/generative models. ### Data Split For the sake of reproducibility, we provide, for each configuration, the 5 folds used in the paper. The data split follows a 60/20/20 ratio and has been created in a stratified way. This means each train/dev/test set contains (approx) the same relative distribution of classes. ## Additional Information An instance of the mT5 model, fine-tuned on ModaFact, is available at [this repo](https://huggingface.co/dhfbk/modafact-ita). ### Licensing Information ModaFact is released under the CC-BY-SA-4.0 License. ### Citation Information If you use ModaFact, please cite the following paper: ``` @inproceedings{rovera-etal-2025-modafact, title = "{M}oda{F}act: Multi-paradigm Evaluation for Joint Event Modality and Factuality Detection", author = "Rovera, Marco and Cristoforetti, Serena and Tonelli, Sara", editor = "Rambow, Owen and Wanner, Leo and Apidianaki, Marianna and Al-Khalifa, Hend and Eugenio, Barbara Di and Schockaert, Steven", booktitle = "Proceedings of the 31st International Conference on Computational Linguistics", month = jan, year = "2025", address = "Abu Dhabi, UAE", publisher = "Association for Computational Linguistics", url = "https://aclanthology.org/2025.coling-main.425/", pages = "6378--6396", } ```