Chowdhury Anjir Ahmed, Hasan Khandaker Tabin, Hoque Khadija Kubra Shahjalal
Department of Computer Science and Engineering, American International University-Bangladesh, Dhaka, Bangladesh.
Cognit Comput. 2021;13(3):761-770. doi: 10.1007/s12559-021-09859-0. Epub 2021 Apr 12.
The dangerously contagious virus named "COVID-19" has struck the world strong and has locked down billions of people in their homes to stop the further spread. All the researchers and scientists in various fields are continually developing a vaccine and prevention methods to aid the world from this challenging situation. However, a reliable prediction of the epidemic may help control this contiguous disease until the cure is available. The machine learning techniques are one of the frontiers in predicting this outbreak's future trend and behavior. Our research is focused on finding a suitable machine learning algorithm that can predict the COVID-19 daily new cases with higher accuracy. This research has used the adaptive neuro-fuzzy inference system (ANFIS) and the long short-term memory (LSTM) to foresee the newly infected cases in Bangladesh. We have compared both the experiments' results, and it can be forenamed that LSTM has shown more satisfactory results. Upon study and testing on several models, we have shown that LSTM works better on a scenario-based model for Bangladesh with mean absolute percentage error (MAPE)-4.51, root-mean-square error (RMSE)-6.55, and correlation coefficient-0.75. This study is expected to shed light on COVID-19 prediction models for researchers working with machine learning techniques and avoid proven failures, especially for small imprecise datasets.
名为“COVID-19”的极具传染性的病毒给世界带来了沉重打击,致使数十亿人居家隔离以阻止病毒进一步传播。各个领域的研究人员和科学家都在不断研发疫苗及预防方法,以帮助世界摆脱这一严峻形势。然而,在找到治愈方法之前,对疫情进行可靠预测可能有助于控制这种传染性疾病。机器学习技术是预测此次疫情未来趋势和行为的前沿方法之一。我们的研究聚焦于寻找一种合适的机器学习算法,能够更准确地预测COVID-19的每日新增病例。本研究使用自适应神经模糊推理系统(ANFIS)和长短期记忆网络(LSTM)来预测孟加拉国的新感染病例。我们对两个实验的结果进行了比较,可以预见,LSTM显示出了更令人满意的结果。在对多个模型进行研究和测试后,我们发现LSTM在基于情景的孟加拉国模型上表现更佳,平均绝对百分比误差(MAPE)为4.51,均方根误差(RMSE)为6.55,相关系数为0.75。本研究有望为使用机器学习技术的研究人员提供有关COVID-19预测模型的启示,并避免已被证实的失败情况,特别是对于小型不精确数据集而言。