School of Economics and Management, Tsinghua University, Beijing, China.
School of Mathematics, Renmin University of China, Beijing, China.
PLoS One. 2023 Jan 23;18(1):e0280834. doi: 10.1371/journal.pone.0280834. eCollection 2023.
The prediction and prevention of influenza is a public health issue of great concern, and the study of timely acquisition of influenza transmission trend has become an important research topic. For achieving more quicker and accurate detection and prediction, the data recorded on the Internet, especially on the search engine from Google or Baidu are widely introduced into this field. Moreover, with the development of intelligent technology and machine learning algorithm, many updated and advanced trend tracking and forecasting methods are also being used in this research problem.
In this paper, a new recurrent neural network architecture, attention-based long short-term memory model is proposed for influenza surveillance. This is a kind of deep learning model which is trained by processing from Baidu Index series so as to fit the real influenza survey time series. Previous studies on influenza surveillance by Baidu Index mostly used traditional autoregressive moving average model or classical machine learning models such as logarithmic linear regression, support vector regression or multi-layer perception model to fit influenza like illness data, which less considered the deep learning structure. Meanwhile, some new model that considered the deep learning structure did not take into account the application of Baidu index data. This study considers introducing the recurrent neural network with long short-term memory combined with attention mechanism into the influenza surveillance research model, which not only fits the research problems well in model structure, but also provides research methods based on Baidu index.
The actual survey data and Baidu Index data are used to train and test the proposed attention-based long short-term memory model and the other comparison models, so as to iterate the value of the model parameters, and to describe and predict the influenza epidemic situation. The experimental results show that our proposed model has better performance in the mean absolute error, mean absolute percentage error, index of agreement and other indicators than the other comparison models.
Our proposed attention-based long short-term memory model vividly verifies the ability of this attention-based long short-term memory structure for better surveillance and prediction the trend of influenza. In comparison with some of the latest models and methods in this research field, the model we proposed is also excellent in effect, even more lightweight and robust. Future research direction can consider fusing multimodal data based on this model and developing more application scenarios.
流感的预测和预防是一个备受关注的公共卫生问题,及时获取流感传播趋势的研究已成为一个重要的研究课题。为了实现更快速、更准确的检测和预测,互联网上记录的数据,特别是谷歌或百度等搜索引擎上的数据,已被广泛引入该领域。此外,随着智能技术和机器学习算法的发展,许多更新和先进的趋势跟踪和预测方法也被应用于这一研究问题。
本文提出了一种新的基于注意力的长短时记忆网络结构,用于流感监测。这是一种深度学习模型,通过处理百度指数系列来训练,以拟合真实的流感调查时间序列。以前基于百度指数的流感监测研究大多使用传统的自回归移动平均模型或经典的机器学习模型,如对数线性回归、支持向量回归或多层感知模型来拟合流感样病例数据,这些模型较少考虑深度学习结构。同时,一些考虑深度学习结构的新模型并没有考虑百度指数数据的应用。本研究考虑将具有长短时记忆的循环神经网络与注意力机制相结合,引入流感监测研究模型,不仅在模型结构上很好地适应了研究问题,还提供了基于百度指数的研究方法。
利用实际调查数据和百度指数数据对提出的基于注意力的长短时记忆模型和其他比较模型进行训练和测试,以迭代模型参数值,描述和预测流感疫情。实验结果表明,与其他比较模型相比,我们提出的模型在平均绝对误差、平均绝对百分比误差、一致性指数等指标上具有更好的性能。
我们提出的基于注意力的长短时记忆模型生动地验证了这种基于注意力的长短时记忆结构对更好地监测和预测流感趋势的能力。与该研究领域的一些最新模型和方法相比,我们提出的模型在效果上也很出色,甚至更轻量、更稳健。未来的研究方向可以考虑基于该模型融合多模态数据,并开发更多的应用场景。