--- license: cc-by-nc-sa-4.0 tags: - text-classification - bias-detection - media - news task_categories: - text-classification task_ids: - multi-class-classification language: - en pretty_name: NEWSUNFOLD size_categories: - n<1K --- # Dataset Card for NEWSUNFOLD ## Dataset Summary **NEWSUNFOLD** contains sentence-level labels of linguistic media bias collected for the paper *“NewsUnfold: Creating a News-Reading Application That Indicates Linguistic Media Bias and Collects Feedback”* (https://doi.org/10.1609/icwsm.v19i1.35847). The dataset has **310** English news sentences with binary bias labels derived from user feedback on the NewsUnfold web app. Each record includes the sentence text, a bias label, an identifier, the source outlet, the original article URL, and a topic tag. - **Collection window:** March 4-11, 2023 - **Label meaning:** `1` = biased, `0` = not biased - **Selection rule:** Only sentences with a clear decision (≥5 votes) are included. GitHub: https://github.com/Media-Bias-Group/NewsUnfold/ ## Use Cases - Training/evaluating bias-detection models - Auditing or probing linguistic bias signals in news sentences - Complementing existing datasets (e.g., BABE) with user-feedback–grounded labels ## Dataset Structure ### Data Fields - `id` *(string)*: Unique sentence identifier. - `text` *(string)*: The news sentence. - `label` *(int; 0 or 1)*: Bias label (`1` = biased, `0` = not biased). - `outlet` *(string)*: News outlet/source. - `news_link` *(string/url)*: Link to the original article. - `topic` *(string)*: Topic/category of the article/sentence. ## Citation ``` @article{Hinterreiter_Wessel_Schliski_Echizen_Latoschik_Spinde_2025, title = {NewsUnfold: Creating a News-Reading Application That Indicates Linguistic Media Bias and Collects Feedback}, volume = {19}, url = {https://doi.org/10.1609/icwsm.v19i1.35847}, number = {1}, journal = {Proceedings of the International AAAI Conference on Web and Social Media}, author = {Hinterreiter, Maximilian and Wessel, Daniel and Schliski, Johanna and Echizen, Isao and Latoschik, Marc Erich and Spinde, Timo}, year = {2025}, doi = {10.1609/icwsm.v19i1.35847}, pages = {1237-1248}, abstract = {We present NewsUnfold, a news-reading web application that (1) indicates sentence-level linguistic media bias predictions to readers, (2) collects reader feedback on those predictions, and (3) releases a new dataset of sentences with community labels indicating perceived bias. In an in-the-wild study, participants used the app to read curated articles while seeing sentences highlighted as biased or not biased (per a baseline classifier). They could then agree or disagree with these highlights, producing crowd-sourced labels. Using only sentences with a clear decision (≥5 votes), we provide a 310-sentence dataset and report inter-annotator agreement (Krippendorff’s α = .504). We further train a classifier combining the BABE dataset with our new sentences, improving F1 to .824 (+2.49% vs. BABE alone), demonstrating that community feedback can refine bias-detection models and support transparent, user-in-the-loop media analysis.}, keywords = {media bias, bias detection, user feedback, dataset, news, sentence-level labeling} } ```