A self-driven ESN-DSS approach for effective COVID-19 time series prediction and modelling.

IF 2.5 4区 医学 Q3 INFECTIOUS DISEASES Epidemiology and Infection Pub Date : 2024-11-22 DOI:10.1017/S0950268824000992
Weiye Wang, Qing Li, Junsong Wang
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Abstract

Since the outbreak of the COVID-19 epidemic, it has posed a great crisis to the health and economy of the world. The objective is to provide a simple deep-learning approach for predicting, modelling, and evaluating the time evolutions of the COVID-19 epidemic. The Dove Swarm Search (DSS) algorithm is integrated with the echo state network (ESN) to optimize the weight. The ESN-DSS model is constructed to predict the evolution of the COVID-19 time series. Specifically, the self-driven ESN-DSS is created to form a closed feedback loop by replacing the input with the output. The prediction results, which involve COVID-19 temporal evolutions of multiple countries worldwide, indicate the excellent prediction performances of our model compared with several artificial intelligence prediction methods from the literature (e.g., recurrent neural network, long short-term memory, gated recurrent units, variational auto encoder) at the same time scale. Moreover, the model parameters of the self-driven ESN-DSS are determined which acts as a significant impact on the prediction performance. As a result, the network parameters are adjusted to improve the prediction accuracy. The prediction results can be used as proposals to help governments and medical institutions formulate pertinent precautionary measures to prevent further spread. In addition, this study is not only limited to COVID-19 time series forecasting but also applicable to other nonlinear time series prediction problems.

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用于有效 COVID-19 时间序列预测和建模的自驱动 ESN-DSS 方法。
自 COVID-19 疫情爆发以来,已对全球的健康和经济造成了巨大危机。我们的目标是提供一种简单的深度学习方法,用于预测、模拟和评估 COVID-19 疫情的时间演变。鸽群搜索(DSS)算法与回声状态网络(ESN)相结合,以优化权重。ESN-DSS 模型用于预测 COVID-19 时间序列的演变。具体地说,自驱动 ESN-DSS 通过用输出替代输入形成闭合反馈回路。预测结果涉及全球多个国家的 COVID-19 时间演变,与文献中的几种人工智能预测方法(如递归神经网络、长短期记忆、门控递归单元、变异自动编码器)相比,我们的模型在相同时间尺度上具有优异的预测性能。此外,自驱动 ESN-DSS 模型参数的确定对预测性能有重要影响。因此,需要对网络参数进行调整,以提高预测精度。预测结果可作为建议,帮助政府和医疗机构制定相关预防措施,防止进一步传播。此外,本研究不仅限于 COVID-19 时间序列预测,也适用于其他非线性时间序列预测问题。
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来源期刊
Epidemiology and Infection
Epidemiology and Infection 医学-传染病学
CiteScore
4.10
自引率
2.40%
发文量
366
审稿时长
3-6 weeks
期刊介绍: Epidemiology & Infection publishes original reports and reviews on all aspects of infection in humans and animals. Particular emphasis is given to the epidemiology, prevention and control of infectious diseases. The scope covers the zoonoses, outbreaks, food hygiene, vaccine studies, statistics and the clinical, social and public-health aspects of infectious disease, as well as some tropical infections. It has become the key international periodical in which to find the latest reports on recently discovered infections and new technology. For those concerned with policy and planning for the control of infections, the papers on mathematical modelling of epidemics caused by historical, current and emergent infections are of particular value.
期刊最新文献
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