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  1. Home
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Browsing by Author "Rivera, Mark Lydrion M."

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    (Don Mariano Marcos Memorial State University - Mid La Union Campus, 2024-12) Rivera, Mark Lydrion M.; Apilado, Bennidict M.; Dantay, Leiann Drew D.; Marquez, Mark Emerson; Reolegio, Jan Rielan H.; Torres, Doreen A.; Malamion, Edelvar A.; Pimentel, Emmalou B.
    This study tackled the factors of poultry egg production and developed a predictive model and system prototype. Key factors included chicken age and seasonal patterns or variation. Using the CRISP-DM methodology, data sets were gathered, cleaned, and trained using different models. Random Forest, Support Vector Machines, and Neural Networks were utilized to predict egg yields. Among the four models, Random Forest had the best prediction and performance based on the different metrics. The researchers also developed a web-based system prototype that integrated the prediction result using Random Forest. The system can enhance resource planning and aid in better decision-making. The system had a usability score of 83.20 on the SUS, which makes it a valuable combination of technology and data insights to enhance poultry farming productivity.

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