Predictive capability of rough set machine learning in tetracycline adsorption using biochar
Paramasivan Balasubramanian,
Muhil Raj Prabhakar,
Chong Liu
et al.
Abstract:Machine learning algorithms investigate relationships in data to deliver useful outputs. However, past models required complete datasets as a prerequisite. In this study, rough set-based machine learning was applied using real-world incomplete datasets to generate a prediction model of biochar’s adsorption capacity based on key attributes. The predictive model consists of if–then rules classifying properties by fulfilling certain conditions. The rules generated from both complete and incomplete datasets exhibi… Show more
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