Attribute reduction is not only one of important parts researched in rough set theory
but also widely applied to many fields such as machine learning
data mining and so on.The attribute reduction method based on conditional information entropy can also be used effectively in the algebra view.However
these are two main disadvantages:this method is sensitive to noise and in some cases the obtained attribute subset may contain some redundant attributes.Therefore
in this paper
after introducing a concept of approximate reduction based on conditional information entropy in decision tables
we present an approximate reduction algorithm based on conditional information entropy(ARABCIE).The algorithm can effectively improve sensitivity to noise and properly select those redundant attributes by applications.Finally
we discuss the robustness of ARABCIE algorithm by experimenting on benchmark using several attribute subsets with different precision.