The Rough Topology for Numerical Data

06/12/2022
by   Uğur Yiğit, et al.
0

In this paper, we give a generalization of the rough topology and the core to numerical data by classifying objects in terms of the attribute values. New approach to find the core for numerical data is discussed. Then a measurement to find whether an attribute is in the core or not is given. This new method for finding the core is used for attribute reduction. It is tested and compared by using machine learning algorithms. Finally, the algorithms and codes to convert a data to pertinent data and to find core is also provided.

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