在推特中监测植物健康威胁的命名实体识别:一个ChouBERT方法

Shufan Jiang, Rafael Angarita, Stéphane Cormier, Francis Rousseaux
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摘要

精准农业的一个重要应用场景是利用传感器和数据分析技术检测和测量作物健康威胁。然而,由于缺乏标记数据和细粒度语义资源,在现有的解决方案中,对文本数据的探索仍然不足。最近的研究表明,如果我们能从非结构化的文本数据中提取重要信息,农民之间的联系日益紧密,在线农业社区的出现,将使Twitter等社交媒体成为检测不熟悉的植物健康事件的参与性平台。ChouBERT是一个法国预训练的语言模型,可以识别有关植物健康问题的推文,并具有对看不见的自然灾害的普遍性。本文通过进一步研究ChouBERT在小标记集上的标记级注释任务的专有技术来解决标记数据的缺乏。
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Named Entity Recognition for Monitoring Plant Health Threats in Tweets: a ChouBERT Approach
An important application scenario of precision agriculture is detecting and measuring crop health threats using sensors and data analysis techniques. However, the textual data are still under-explored among the existing solutions due to the lack of labelled data and fine-grained semantic resources. Recent research suggests that the increasing connectivity of farmers and the emergence of online farming communities make social media like Twitter a participatory platform for detecting unfamiliar plant health events if we can extract essential information from unstructured textual data. ChouBERT is a French pre-trained language model that can identify Tweets concerning observations of plant health issues with generalizability on unseen natural hazards. This paper tackles the lack of labelled data by further studying ChouBERT’s know-how on token-level annotation tasks over small labeled sets.
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