The accurate forecasting of infectious epidemic diseases such as influenza is a crucial task undertaken by medical institutions. Although numerous flu forecasting methods and models based mainly on historical flu activity data and online user-generated contents have been proposed in previous studies, no flu forecasting model targeting multiple countries using two types of data exists at present. Our paper leverages multi-task learning to tackle the challenge of building one flu forecasting model targeting multiple countries; each country as each task. Also, to develop the flu prediction model with higher performance, we solved two issues; finding suitable search queries, which are part of the user-generated contents, and how to leverage search queries efficiently in the model creation. For the first issue, we propose the transfer approaches from English to other languages. For the second issue, we propose a novel flu forecasting model that takes advantage of search queries using an attention mechanism and extend the model to a multi-task model for multiple countries' flu forecasts. Experiments on forecasting flu epidemics in five countries demonstrate that our model significantly improved the performance by leveraging the search queries and multi-task learning compared to the baselines.
翻译:准确预测流感等传染病是医疗机构的一项关键任务。虽然在以往的研究中提出了许多主要基于历史流感活动数据和在线用户生成的内容的流感预测方法和模型,但目前还没有针对使用两种数据类型的多个国家的流感预测模型。我们的论文利用多重任务学习,应对针对多个国家建立一种流感预测模型的挑战;每个国家作为每项任务。此外,为了开发流感预测模型,我们解决了两个问题;寻找适当的搜索查询,这是用户生成的内容的一部分,以及如何在创建模型时有效利用搜索查询。关于第一个问题,我们提议将方法从英文转移到其他语文。关于第二个问题,我们提议采用新的流感预测模型,利用关注机制进行搜索,并将模型推广到多国流感预测的多任务模型。在五个国家进行的流感预测实验表明,我们的模型通过利用搜索查询和多任务学习,与基线相比,大大提高了工作绩效。