RSAR treats datasets by removing attributes that are unnecessary for a classification task. It performs greedy feature selection using various versions of the QuickReduct algorithm. It is useful in reducing redundancies in nominally-valued (i.e. discrete) datasets for exploration or as a preprocessing step to training machine learning algorithms on the data.
