C5.0: Decision Trees and Rule-Based Models

C5.0: Decision Trees and Rule-Based Models

C5.0 is a robust machine learning software that builds upon Quinlan's foundational work in decision trees and rule-based models. It excels in pattern recognition, offering enhanced performance and flexibility for data analysis tasks. Users can explore its capabilities through the official page at https://CRAN.R-project.org/package=C50.

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