Dense Feature Memory Augmented Transformers for COVID-19 Vaccination Search Classification

Jai Gupta, Yi Tay, C. Kamath, Vinh Q. Tran, Donald Metzler, S. Bavadekar, Mimi Sun, E. Gabrilovich
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Abstract

With the devastating outbreak of COVID-19, vaccines are one of the crucial lines of defense against mass infection in this global pandemic. Given the protection they provide, vaccines are becoming mandatory in certain social and professional settings. This paper presents a classification model for detecting COVID-19 vaccination related search queries, a machine learning model that is used to generate search insights for COVID-19 vaccinations. The proposed method combines and leverages advancements from modern state-of-the-art (SOTA) natural language understanding (NLU) techniques such as pretrained Transformers with traditional dense features. We propose a novel approach of considering dense features as memory tokens that the model can attend to. We show that this new modeling approach enables a significant improvement to the Vaccine Search Insights (VSI) task, improving a strong well-established gradient-boosting baseline by relative +15% improvement in F1 score and +14% in precision.
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基于密集特征记忆增强变压器的COVID-19疫苗搜索分类
随着2019冠状病毒病(COVID-19)的毁灭性爆发,疫苗是在这场全球大流行中抵御大规模感染的关键防线之一。鉴于疫苗所提供的保护,在某些社会和专业环境中,疫苗正成为强制性的。本文提出了一种用于检测COVID-19疫苗接种相关搜索查询的分类模型,该模型是一种用于生成COVID-19疫苗接种搜索洞察的机器学习模型。所提出的方法结合并利用了现代最先进的(SOTA)自然语言理解(NLU)技术的进步,例如具有传统密集特征的预训练变形金刚。我们提出了一种新颖的方法,将密集特征视为模型可以关注的记忆标记。我们表明,这种新的建模方法能够显著改善疫苗搜索洞察(VSI)任务,通过F1得分和精度的相对提高+15%和+14%,改善了强大的已建立的梯度增强基线。
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