Max Angelo D. Perin, Larmie S. Feliscuzo, Chris Jordan G. Aliac, Nelia Q. Catayas
Abstract:
Irrigators' Associations (IAs) are critical in managing water resources and influencing agricultural productivity
and rural sustainability. Predicting IA membership is complex due to socio-economic, organizational, and
environmental factors. This study applies machine learning techniques—Decision Trees and Random Forests—
to model IA membership and identify the key predictive variables. Using a dataset of 234 IA records, the models
were evaluated based on Mean Absolute Error (MAE), with the Random Forest model achieving a lower MAE of
19.49, compared to 24.92 for the Decision Tree. Key predictors include the number of farm beneficiaries, service
area, years of operation, and leadership structure. The results demonstrate the potential of machine learning
in supporting data-driven planning for IA engagement, offering valuable insights that can enhance resource
allocation and inform policy development in the agricultural sector, ultimately contributing to more efficient
water management and improved rural livelihoods.
Keywords: Irrigators' Associations, Machine Learning, Decision Trees, Random Forests, Mean Absolute Error
1. Journal Description 2. Select Journal a. Declaration of Originality b. Select the Journal c. Paper Formatting d. Initial Manuscript Submission e. Peer Review Process f. Manuscript Revision g. Editing Services h. Final Manuscript Submission i. Acknowledgement to Publish j. Copyright Matters k. Inhouse Publication