A comparison of machine learning methods for knowledge extraction model in A LoRa-Based waste bin monitoring system
Aa Zezen Zaenal Abidin,
Mohd Fairuz Iskandar Othman,
Aslinda Hassan
et al.
Abstract:Knowledge Extraction Model (KEM) is a system that extracts knowledge through an IoT-based smart waste bin emptying scheduling classification. Classification is a difficult problem and requires an efficient classification method. This research contributes in the form of the KEM system in the classification of scheduling for emptying waste bins with the best performance of the Machine Learning method. The research aims to compare the performance of Machine Learning methods in the form of Decision Tree, Naïve Bay… Show more
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