2017
DOI: 10.1371/journal.pone.0176690
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Forecasting influenza in Hong Kong with Google search queries and statistical model fusion

Abstract: BackgroundThe objective of this study is to investigate predictive utility of online social media and web search queries, particularly, Google search data, to forecast new cases of influenza-like-illness (ILI) in general outpatient clinics (GOPC) in Hong Kong. To mitigate the impact of sensitivity to self-excitement (i.e., fickle media interest) and other artifacts of online social media data, in our approach we fuse multiple offline and online data sources.MethodsFour individual models: generalized linear mod… Show more

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Cited by 93 publications
(85 citation statements)
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References 64 publications
(95 reference statements)
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“…This finding broadly supports the work of other studies e.g., in epidemiology there is an extensive number of studies dedicated to these ideas [39][40][41][42][43]. In addition, few studies have investigated crime reports or rate prediction [15,[44][45][46].…”
Section: Discussionsupporting
confidence: 86%
“…This finding broadly supports the work of other studies e.g., in epidemiology there is an extensive number of studies dedicated to these ideas [39][40][41][42][43]. In addition, few studies have investigated crime reports or rate prediction [15,[44][45][46].…”
Section: Discussionsupporting
confidence: 86%
“…The papers which cite elements of this cluster can be viewed as research fronts. For example, the work in [62] can be considered as a current research front which builds on the intellectual base of Crowd-Sourced methods for disease surveillance. [29,30,62,183,192,197,200,216,.…”
Section: Discussionmentioning
confidence: 99%
“…Artificial neural network methods Artificial neural networks (ANN) have gained increased prominence in epidemic forecasting due to their self-learning ability without prior knowledge. Xu et al [95] firstly introduced feed-forward neural network (FNN) into surveillance of infectious diseases and investigated its predictive utility using CDC ILI data, Google [82] proposed an LSTM based method that integrates the impacts of climatic factors and geographical proximity to achieve better forecasting performance. Wu et al [93] constructed a deep learning structure combining RNN and convolutional neural network to fuse information from different sources.…”
Section: -Tdefsi Methodsmentioning
confidence: 99%