Cluster-based LSTM models to improve Dengue cases forecast

Juan Vicente Bogado Machuca, Diego Herbin Stalder Díaz, Christian Emilio Schaerer Serra
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Abstract

Public health problems such as dengue fever need accurate forecasts so governments can take effective preventive measures. Deep learning (DL) and machine learning have become increasingly popular as the volume of data increases continuously. Nevertheless, performing accurate predictions in areas with fewer cases can be challenging. When we apply DL models using long short-term memory (LSTM) in different cities considering weekly dengue incidence and climate, some models may present heterogeneous behaviours and poor accuracy because of the need for more data. To mitigate this problem, clustering analysis across time series is performed based on scores to measure the clustering quality in 217 Paraguayan cities. First, we compare the raw and feature-based clustering techniques considering several metrics.Our results indicate that hierarchical clustering combined with Spearman correlation is the most appropriate approach. Finally, several LSTM models built using clustering results were compared. The main contribution of this work is a technique that can improve the performance of time series models that combine information from similar time series and weather data.
基于聚类的LSTM模型改进登革热病例预测
登革热等公共卫生问题需要准确的预报,以便政府采取有效的预防措施。随着数据量的不断增加,深度学习(DL)和机器学习变得越来越流行。然而,在病例较少的地区进行准确预测可能具有挑战性。当我们在考虑登革热周发病率和气候的不同城市应用使用长短期记忆(LSTM)的深度学习模型时,由于需要更多的数据,一些模型可能会表现出异质行为和较差的准确性。为了缓解这一问题,在巴拉圭217个城市中,基于分数进行了跨时间序列的聚类分析,以衡量聚类质量。首先,我们比较了原始聚类技术和基于特征的聚类技术。结果表明,分层聚类结合Spearman相关是最合适的聚类方法。最后,对聚类结果构建的LSTM模型进行了比较。这项工作的主要贡献是一种技术,可以提高时间序列模型的性能,该模型结合了来自相似时间序列和天气数据的信息。
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