Large amount of data have been collected routinely in the course of
day-to-day work in different fields. Typically, the datasets constantly
grow accumulating a large number of features, which are not equally
important in decision-making. Rough set theory (RST)recently becomes
very popular in dimensionality reduction and feature selection of large
datasets. The RST approach to feature selection is used to determine a
subset of features (or attributes) called reduct which can predict the
decision concepts. In reality, there are multiple reducts in a given
information system used for developing classifiers, amongst which the
best performer is chosen as the final solution to the problem. Selecting
a reduct with good performance is time expensive, as there might be many
reducts of a given dataset. Therefore, obtaining a best performer
classifier is not practical rather ensemble of different classifiers may
lead to better classification accuracy. However, combining large number
of classifiers increases complexity of the system. The work trades off
between these two approaches and creates an efficient ensemble
classifier.