Pulse Brain · Growing Health Evidence Index
Peer-reviewed

Developing an Ensembled Machine Learning Prediction Model for Marine Fish and Aquaculture Production

Labonnah Farzana Rahman; Mohammad Marufuzzaman; Lubna Alam; Md. Azizul Bari; U. Rashid Sumaila; Lariyah Mohd Sidek

Sustainability · 2021

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Summary

The fishing industry is identified as a strategic sector to raise domestic protein production and supply in Malaysia. Global changes in climatic variables have impacted and continue to impact marine fish and aquaculture production, where machine learning (ML) methods are yet to be extensively used to study aquatic systems in Malaysia. ML-based algorithms could be paired with feature importance, i.e., (features that have the most predictive power) to achieve better prediction accuracy and can provide new insights on fish production. This research aims to develop an ML-based prediction of marine fish and aquaculture production. Based on the feature importance scores, we select the group of climatic variables for three different ML models: linear, gradient boosting, and random forest regressi

Source type
Peer-reviewed study
DOI
10.3390/su13169124
Catalogue ID
NRmo9rin9c-0xu
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