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Forecasting future global food demand: A systematic review and meta-analysis of model complexity

机译:预测未来全球粮食需求:对模型复杂性的系统回顾和荟萃分析

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摘要

Predicting future food demand is a critical step for formulating the agricultural, economic and conservation policies required to feed over 9 billion people by 2050 while doing minimal harm to the environment. However, published future food demand estimates range substantially, making it difficult to determine optimal policies. Here we present a systematic review of the food demand literature-including a meta-analysis of papers reporting average global food demand predictions-and test the effect of model complexity on predictions. We show that while estimates of future global kilocalorie demand have a broad range, they are not consistently dependent on model complexity or form. Indeed, time-series and simple income-based models often make similar predictions to integrated assessments (e.g., with expert opinions, future prices or climate influencing forecasts), despite having different underlying assumptions and mechanisms. However, reporting of model accuracy and uncertainty was uncommon, leading to difficulties in making evidence-based decisions about which forecasts to trust. We argue for improved model reporting and transparency to reduce this problem and improve the pace of development in this field.
机译:预测未来的粮食需求是制定农业,经济和保护政策的关键步骤,该政策要求在2050年之前养活90亿人口,同时对环境的危害最小。但是,已发布的未来粮食需求估计数范围很大,因此难以确定最佳政策。在这里,我们对粮食需求文献进行了系统的综述,包括对报告全球平均粮食需求预测的论文进行了荟萃分析,并测试了模型复杂性对预测的影响。我们表明,尽管对未来全球千卡需求的估算范围很广,但它们并不始终取决于模型的复杂性或形式。确实,尽管具有不同的基本假设和机制,但时间序列和简单的基于收入的模型通常会做出与综合评估类似的预测(例如,采用专家意见,未来价格或影响气候的预测)。但是,报告模型准确性和不确定性的情况并不常见,从而导致难以就可信赖的预测做出基于证据的决策。我们主张改进模型报告和透明度,以减少此问题并提高该领域的发展速度。

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