Causal Modeling of Soil Processes for Improved Generalization
- Somya Sharma ,
- Swati Sharma ,
- Andy Neal ,
- Sara Malvar ,
- Eduardo Rodrigues ,
- John Crawford ,
- Emre Kiciman ,
- Ranveer Chandra
NeurIPS 2022 Workshop Tackling Climate Change with Machine Learning |
Measuring and monitoring soil organic carbon is critical for agricultural productivity and for addressing critical environmental problems. Soil organic carbon not only enriches nutrition in soil, but also has a gamut of co-benefits such as improving water storage and limiting physical erosion. Despite a litany of work in soil organic carbon estimation, current approaches do not generalize well across soil conditions and management practices. We empirically show that explicit modeling of cause-and-effect relationships among the soil processes improves the out-of-distribution generalizability of prediction models. We provide a comparative analysis of soil organic carbon estimation models where the skeleton is estimated using causal discovery methods. Our framework provide an average improvement of 81% in test mean squared error and 52% in test mean absolute error.