Multivariate time series short term forecasting using cumulative data of coronavirus.

IF 2.7 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Suryanshi Mishra, Tinku Singh, Manish Kumar, Satakshi
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Abstract

Coronavirus emerged as a highly contagious, pathogenic virus that severely affects the respiratory system of humans. The epidemic-related data is collected regularly, which machine learning algorithms can employ to comprehend and estimate valuable information. The analysis of the gathered data through time series approaches may assist in developing more accurate forecasting models and strategies to combat the disease. This paper focuses on short-term forecasting of cumulative reported incidences and mortality. Forecasting is conducted utilizing state-of-the-art mathematical and deep learning models for multivariate time series forecasting, including extended susceptible-exposed-infected-recovered (SEIR), long-short-term memory (LSTM), and vector autoregression (VAR). The SEIR model has been extended by integrating additional information such as hospitalization, mortality, vaccination, and quarantine incidences. Extensive experiments have been conducted to compare deep learning and mathematical models that enable us to estimate fatalities and incidences more precisely based on mortality in the eight most affected nations during the time of this research. The metrics like mean absolute error (MAE), root mean square error (RMSE), and mean absolute percentage error (MAPE) are employed to gauge the model's effectiveness. The deep learning model LSTM outperformed all others in terms of forecasting accuracy. Additionally, the study explores the impact of vaccination on reported epidemics and deaths worldwide. Furthermore, the detrimental effects of ambient temperature and relative humidity on pathogenic virus dissemination have been analyzed.

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利用冠状病毒的累积数据进行多变量时间序列短期预测。
冠状病毒是一种高度传染性的致病性病毒,严重影响人类的呼吸系统。定期收集疫情相关数据,机器学习算法可以用来理解和估计有价值的信息。通过时间序列方法对收集的数据进行分析可能有助于开发更准确的预测模型和策略来对抗这种疾病。本文着重于累计报告发病率和死亡率的短期预测。预测是利用最先进的数学和深度学习模型进行的,用于多变量时间序列预测,包括扩展易感暴露感染者康复(SEIR)、长短期记忆(LSTM)和向量自回归(VAR)。SEIR模型通过整合住院、死亡率、疫苗接种和隔离发生率等额外信息进行了扩展。已经进行了广泛的实验来比较深度学习和数学模型,使我们能够根据本研究期间受影响最严重的八个国家的死亡率更准确地估计死亡人数和发病率。采用平均绝对误差(MAE)、均方根误差(RMSE)和平均绝对百分比误差(MAPE)等指标来衡量模型的有效性。深度学习模型LSTM在预测准确性方面优于所有其他模型。此外,该研究还探讨了疫苗接种对全球报告的流行病和死亡的影响。此外,还分析了环境温度和相对湿度对病原病毒传播的不利影响。
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来源期刊
Evolving Systems
Evolving Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
7.80
自引率
6.20%
发文量
67
期刊介绍: Evolving Systems covers surveys, methodological, and application-oriented papers in the area of dynamically evolving systems. ‘Evolving systems’ are inspired by the idea of system model evolution in a dynamically changing and evolving environment. In contrast to the standard approach in machine learning, mathematical modelling and related disciplines where the model structure is assumed and fixed a priori and the problem is focused on parametric optimisation, evolving systems allow the model structure to gradually change/evolve. The aim of such continuous or life-long learning and domain adaptation is self-organization. It can adapt to new data patterns, is more suitable for streaming data, transfer learning and can recognise and learn from unknown and unpredictable data patterns. Such properties are critically important for autonomous, robotic systems that continue to learn and adapt after they are being designed (at run time). Evolving Systems solicits publications that address the problems of all aspects of system modelling, clustering, classification, prediction and control in non-stationary, unpredictable environments and describe new methods and approaches for their design. The journal is devoted to the topic of self-developing, self-organised, and evolving systems in its entirety — from systematic methods to case studies and real industrial applications. It covers all aspects of the methodology such as Evolving Systems methodology Evolving Neural Networks and Neuro-fuzzy Systems Evolving Classifiers and Clustering Evolving Controllers and Predictive models Evolving Explainable AI systems Evolving Systems applications but also looking at new paradigms and applications, including medicine, robotics, business, industrial automation, control systems, transportation, communications, environmental monitoring, biomedical systems, security, and electronic services, finance and economics. The common features for all submitted methods and systems are the evolving nature of the systems and the environments. The journal is encompassing contributions related to: 1) Methods of machine learning, AI, computational intelligence and mathematical modelling 2) Inspiration from Nature and Biology, including Neuroscience, Bioinformatics and Molecular biology, Quantum physics 3) Applications in engineering, business, social sciences.
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