论文标题

在新型冠状病毒流行的高度不确定性下,使用杂交深度学习和模糊规则诱导的复合蒙特卡洛决策

Composite Monte Carlo Decision Making under High Uncertainty of Novel Coronavirus Epidemic Using Hybridized Deep Learning and Fuzzy Rule Induction

论文作者

Fong, Simon James, Li, Gloria, Dey, Nilanjan, Crespo, Ruben Gonzalez, Herrera-Viedma, Enrique

论文摘要

自2019年12月以来,在新颖的冠状病毒流行病的出现中,政府和当局一直在尽最大努力在高度不确定性下做出关键决定。复合蒙特卡洛(CMC)仿真是一种预测方法,它可以推断可用的数据,这些数据从多个相关/休闲的微型数据源分解为通过从某些概率分布中绘制随机样本来分解为许多可能的未来结果。例如,中国案件的总体趋势和传播受到武汉城市附近城市附近城市的时间空间数据的影响代表未来事件的行为以及复合数据关系的正确性。在本文中,实验了一项关于使用CMC的案例研究,该案例研究通过深度学习网络和模糊规则诱导增强了有关流行病发展的更好随机见解。与其对MC进行简单和统一的假设,这是一种常见的实践,而是将基于深度学习的CMC用于模糊规则诱导技术的结合。结果,决策者从更合适的MC输出中受益,该输出得到了最低最大规则的补充,该规则预测了关于流行病的未来可能性的极端范围。

In the advent of the novel coronavirus epidemic since December 2019, governments and authorities have been struggling to make critical decisions under high uncertainty at their best efforts. Composite Monte-Carlo (CMC) simulation is a forecasting method which extrapolates available data which are broken down from multiple correlated/casual micro-data sources into many possible future outcomes by drawing random samples from some probability distributions. For instance, the overall trend and propagation of the infested cases in China are influenced by the temporal-spatial data of the nearby cities around the Wuhan city (where the virus is originated from), in terms of the population density, travel mobility, medical resources such as hospital beds and the timeliness of quarantine control in each city etc. Hence a CMC is reliable only up to the closeness of the underlying statistical distribution of a CMC, that is supposed to represent the behaviour of the future events, and the correctness of the composite data relationships. In this paper, a case study of using CMC that is enhanced by deep learning network and fuzzy rule induction for gaining better stochastic insights about the epidemic development is experimented. Instead of applying simplistic and uniform assumptions for a MC which is a common practice, a deep learning-based CMC is used in conjunction of fuzzy rule induction techniques. As a result, decision makers are benefited from a better fitted MC outputs complemented by min-max rules that foretell about the extreme ranges of future possibilities with respect to the epidemic.

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