The outbreak of COVID-19 raises attention from the researchers from various communities. While many scientific articles have been published, a system that can provide reliable information to COVID-19 related questions from the latest academic resources is crucial, especially for the medical community in the current time-critical race to treat patients and to find a cure for the virus. To address the requests, we propose our CAiRE-COVID, a neural-based system that uses open-domain question answering (QA) techniques combined with summarization techniques for mining the available scientific literature. It leverages the Information Retrieval (IR) system and QA models to extract relevant snippets from existing literature given a query. Fluent summaries are also provided to help understand the content in a more efficient way. Our system has been awarded as winner for one of the tasks in CORD-19 Kaggle Challenge. We also launched our CAiRE-COVID website for broader use. The code for our system is also open-sourced to bootstrap further study.
翻译:COVID-19的爆发引起了来自不同社区的研究人员的注意,虽然已经发表了许多科学文章,但能够从最新的学术资源中为COVID-19相关问题提供可靠信息的系统至关重要,特别是对于医学界在目前时间紧迫的竞赛中治疗病人和找到病毒的治疗方法,我们提出CAiRE-COVID,这是一个以神经为基础的系统,使用开放的回答问题技术,结合现有科学文献的开采技术的总结技术,利用信息检索系统(IR)和QA模型从现有文献中提取相关片段。还提供流畅的摘要,帮助以更有效的方式理解内容。我们的系统被授予CORD-19 Kagle挑战公司的一项任务,我们还启动了CAiRE-COVID网站,供更广泛的使用。我们的系统代码也开源于进一步的研究。