Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
380416 | Engineering Applications of Artificial Intelligence | 2015 | 17 Pages |
This work proposes a method for data condensing. The method is based on the selection of a generator of data prototypes. An algorithm for the front propagation of the prototypes׳ boundaries is performed in order to obtain the class boundaries given by a set of support vectors. The proposed method just has one tuning parameter and presents high classification rates even for complex topological and non-concave classes and low tendency to over-fitting. The most important advantage of the proposed method is its higher condensing rate without a significant detrimental effect on the classification rate. The algorithm is intended to be applied for condensing data in low memory devices and transmission of high-volume of data where data condensing could be crucial.