Throughout the Covid-19 pandemic, a significant amount of effort had been put into developing techniques that predict the number of infections under various assumptions about the public policy and non-pharmaceutical interventions. While both the available data and the sophistication of the AI models and available computing power exceed what was available in previous years, the overall success of prediction approaches was very limited. In this paper, we start from prediction algorithms proposed for XPrize Pandemic Response Challenge and consider several directions that might allow their improvement. Then, we investigate their performance over medium-term predictions extending over several months. We find that augmenting the algorithms with additional information about the culture of the modeled region, incorporating traditional compartmental models and up-to-date deep learning architectures can improve the performance for short term predictions, the accuracy of medium-term predictions is still very low and a significant amount of future research is needed to make such models a reliable component of a public policy toolbox.
翻译:在整个Covid-19大流行期间,已作出大量努力,发展各种技术,根据关于公共政策和非药物干预的各种假设预测感染人数,虽然现有数据以及AI模型和现有计算能力的精密程度超过了前几年,但预测方法的总体成功程度非常有限,在本文件中,我们从XPrize大流行病应对挑战的预测算法开始,考虑可能改进这些算法的若干方向。然后,我们调查这些算法在为期数月的中期预测中的性能。我们发现,以更多关于模型区域文化的信息来补充算法,纳入传统的区际模型和最新的深层学习结构,可以改善短期预测的性能,中期预测的准确性仍然很低,今后需要大量研究才能使这种模型成为公共政策工具箱的可靠组成部分。