论文标题
推文填充:用于多个食源性疾病检测任务的注释数据集
TWEET-FID: An Annotated Dataset for Multiple Foodborne Illness Detection Tasks
论文作者
论文摘要
食源性疾病是一个严重但可以预防的公共卫生问题 - 延迟检测相关的暴发,导致生产力损失,昂贵的召回,公共安全危害甚至生命丧失。尽管社交媒体是识别未报告的食源性疾病的有前途的来源,但缺乏标记的数据集来开发有效的爆发探测模型。为了加快用于食品生气爆发检测的基于机器学习的模型,我们提出了推文-FID(Tweet-foodborne疾病检测),这是第一个用于多个食源性疾病事件检测任务的公开注释的数据集。从Twitter收集的Tweet-FID带有三个方面:Tweet类,实体类型和老虎机类型,并由专家以及众包工人制作的标签。我们介绍了利用这三个方面的几个域任务:文本相关性分类(TRC),实体提及检测(EMD)和插槽填充(SF)。我们描述了用于支持这些任务模型开发的数据集设计,创建和标签的端到端方法。提供了这些任务的全面结果,该任务利用了Tweet-FID数据集上的最新单项和多任务深度学习方法。该数据集为未来的Foodborne爆发检测提供了机会。
Foodborne illness is a serious but preventable public health problem -- with delays in detecting the associated outbreaks resulting in productivity loss, expensive recalls, public safety hazards, and even loss of life. While social media is a promising source for identifying unreported foodborne illnesses, there is a dearth of labeled datasets for developing effective outbreak detection models. To accelerate the development of machine learning-based models for foodborne outbreak detection, we thus present TWEET-FID (TWEET-Foodborne Illness Detection), the first publicly available annotated dataset for multiple foodborne illness incident detection tasks. TWEET-FID collected from Twitter is annotated with three facets: tweet class, entity type, and slot type, with labels produced by experts as well as by crowdsource workers. We introduce several domain tasks leveraging these three facets: text relevance classification (TRC), entity mention detection (EMD), and slot filling (SF). We describe the end-to-end methodology for dataset design, creation, and labeling for supporting model development for these tasks. A comprehensive set of results for these tasks leveraging state-of-the-art single- and multi-task deep learning methods on the TWEET-FID dataset are provided. This dataset opens opportunities for future research in foodborne outbreak detection.