Machine Learning Classifier-Based Metrics Can Evaluate the Efficiency of Separation Systems.
Éva KenyeresAlex KummerJános AbonyiPublished in: Entropy (Basel, Switzerland) (2024)
This paper highlights that metrics from the machine learning field (e.g., entropy and information gain) used to qualify a classifier model can be used to evaluate the effectiveness of separation systems. To evaluate the efficiency of separation systems and their operation units, entropy- and information gain-based metrics were developed. The receiver operating characteristic (ROC) curve is used to determine the optimal cut point in a separation system. The proposed metrics are verified by simulation experiments conducted on the stochastic model of a waste-sorting system.