A survey and taxonomy of methods interpreting random forest models
A survey and taxonomy of methods interpreting random forest models
The interpretability of random forest (RF) models is a research topic of growing interest in the machine learning (ML) community. In the state of the art, RF is considered a powerful learning ensemble given its predictive performance, flexibility, and ease of use. Furthermore, the inner process of the RF model …