Department of Computer Science, New York University, New York, NY, USA.
Department of Population Health, NYU Grossman School of Medicine, New York, NY, USA.
Sci Adv. 2023 Mar 3;9(9):eabm3449. doi: 10.1126/sciadv.abm3449.
Anticipating food crisis outbreaks is crucial to efficiently allocate emergency relief and reduce human suffering. However, existing predictive models rely on risk measures that are often delayed, outdated, or incomplete. Using the text of 11.2 million news articles focused on food-insecure countries and published between 1980 and 2020, we leverage recent advances in deep learning to extract high-frequency precursors to food crises that are both interpretable and validated by traditional risk indicators. We demonstrate that over the period from July 2009 to July 2020 and across 21 food-insecure countries, news indicators substantially improve the district-level predictions of food insecurity up to 12 months ahead relative to baseline models that do not include text information. These results could have profound implications on how humanitarian aid gets allocated and open previously unexplored avenues for machine learning to improve decision-making in data-scarce environments.
预测粮食危机的爆发对于高效分配紧急救援物资和减少人类苦难至关重要。然而,现有的预测模型所依赖的风险度量往往存在延迟、过时或不完整的问题。利用 1980 年至 2020 年间聚焦于粮食不安全国家的 1120 万篇新闻文章的文本,我们利用深度学习的最新进展来提取粮食危机的高频前兆,这些前兆既具有可解释性,又可以通过传统风险指标进行验证。我们证明,在 2009 年 7 月至 2020 年 7 月期间,在 21 个粮食不安全的国家,新闻指标在 12 个月的时间内极大地提高了粮食不安全的地区预测水平,相对于不包含文本信息的基准模型而言。这些结果可能会对人道主义援助的分配方式产生深远影响,并为机器学习在数据稀缺环境中改善决策提供了以前未曾探索的途径。