论文标题
通过因果推理评估数字农业建议
Evaluating Digital Agriculture Recommendations with Causal Inference
论文作者
论文摘要
与几个行业的快速数字化相反,农业遭受了智能农业工具的采用较低。尽管AI驱动的数字农业工具可以提供高性能的预测功能,但它们缺乏对农民利益的明显定量证据。现场实验可以得出此类证据,但通常是昂贵的,耗时,因此范围和应用规模有限。为此,我们提出了一个观察性因果推理框架,以对数字工具对目标农场绩效指标的影响进行经验评估(例如,在这种情况下,产量)。这样,我们可以通过提高数字农业市场的透明度来提高农民的信任,并加速采用旨在确保农民收入弹性和全球农业可持续性的技术。作为一个案例研究,我们根据数值天气预测设计并实施了一个建议系统,以用于棉花的最佳播种时间,该预测在2021年的生长季节中被农民合作社使用。然后,我们利用农业知识,收集的产量数据和环境信息来开发农场系统的因果图。使用后门标准,我们确定了播种建议对产量的影响,并随后使用线性回归,匹配,反向倾向得分加权和元学习者估算它。结果表明,根据我们的建议,根据我们的建议播种的田地增加了统计学上的显着增加,根据该方法的不同,范围从12%到17%。如估计方法之间的一致性和四个成功的反驳测试所表明的那样,效果估计值很强。我们认为,可以为其他领域的决策支持系统实施这种方法,将其评估扩展到内部功能的绩效评估之外。
In contrast to the rapid digitalization of several industries, agriculture suffers from low adoption of smart farming tools. While AI-driven digital agriculture tools can offer high-performing predictive functionalities, they lack tangible quantitative evidence on their benefits to the farmers. Field experiments can derive such evidence, but are often costly, time consuming and hence limited in scope and scale of application. To this end, we propose an observational causal inference framework for the empirical evaluation of the impact of digital tools on target farm performance indicators (e.g., yield in this case). This way, we can increase farmers' trust via enhancing the transparency of the digital agriculture market and accelerate the adoption of technologies that aim to secure farmer income resilience and global agricultural sustainability. As a case study, we designed and implemented a recommendation system for the optimal sowing time of cotton based on numerical weather predictions, which was used by a farmers' cooperative during the growing season of 2021. We then leverage agricultural knowledge, collected yield data, and environmental information to develop a causal graph of the farm system. Using the back-door criterion, we identify the impact of sowing recommendations on the yield and subsequently estimate it using linear regression, matching, inverse propensity score weighting and meta-learners. The results reveal that a field sown according to our recommendations exhibited a statistically significant yield increase that ranged from 12% to 17%, depending on the method. The effect estimates were robust, as indicated by the agreement among the estimation methods and four successful refutation tests. We argue that this approach can be implemented for decision support systems of other fields, extending their evaluation beyond a performance assessment of internal functionalities.