AI RESEARCH

Learning Parametric Nitrogen Fertilizer Response Curves Using Neuro Symbolic Regression

arXiv CS.LG

ArXi:2605.31276v1 Announce Type: new Accurately modeling crop response to Nitrogen (N) fertilization is a fundamental challenge in precision agriculture, as it impacts both economic returns and environmental sustainability. Existing approaches either rely on predefined parametric forms or opaque machine learning models, limiting their ability to interpret or discover site-specific functional relationships from data. In this work, we propose a neuro symbolic regression (SR) approach to learn parametric N-response curves without assuming a predefined functional form.