--- license: cc-by-4.0 task_categories: - text-classification language: - de pretty_name: GAHD configs: - config_name: default data_files: - split: train path: "data/gahd.csv" - config_name: gahd_disaggregated data_files: - split: train path: "data/gahd_disaggregated.csv" --- **NOTE** README copied from https://github.com/jagol/gahd This repository contains the dataset from our NAACL 2024 paper "Improving Adversarial Data Collection by Supporting Annotators: Lessons from GAHD, a German Hate Speech Dataset". `gahd.csv` contains the following columns: - `gahd_id`: unique identifier of the entry - `text`: text of the entry - `label`: `0` = "not-hate speech", `1` = "hate speech" - `round`: round in which the entry was created - `split`: "train", "dev", or "test" - `contrastive_gahd_id`: `gahd_id` of its contrastive example `gahd_disaggregated.csv` contains the following additional columns: - `source`: - if annotators entered the entry via the Dynabench interface: `dynabench` - if the entry was translated from the Vidgen et al. 2021 dataset: `translation` - if the entry stems from the Leipzit news corpus: `news` - `model_prediction`: label predicted by the target model, `0` or `1` - `annotator_id`: unique identifier of the annotator that created the entry - `annotator_labels`: a string containing a forward slash-separated list of all labels by annotators - `expert_labels`: `0` or `1` if an expert annotator annotated the entry, otherwise empty When using GAHD, please cite our preprint on Arxiv: ``` @misc{goldzycher2024improving, title={Improving Adversarial Data Collection by Supporting Annotators: Lessons from GAHD, a German Hate Speech Dataset}, author={Janis Goldzycher and Paul Röttger and Gerold Schneider}, year={2024}, eprint={2403.19559}, archivePrefix={arXiv}, primaryClass={cs.CL} } ```