An Efficient and Adaptive Granular-ball Generation Method in Classification Problem
Granular-ball computing is an efficient, robust, and scalable learning method for granular computing. The basis of granular-ball computing is the granular-ball generation method. This paper proposes a method for accelerating the granular-ball generation using the division to replace $k$-means. It ca...
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Zusammenfassung: | Granular-ball computing is an efficient, robust, and scalable learning method
for granular computing. The basis of granular-ball computing is the
granular-ball generation method. This paper proposes a method for accelerating
the granular-ball generation using the division to replace $k$-means. It can
greatly improve the efficiency of granular-ball generation while ensuring the
accuracy similar to the existing method. Besides, a new adaptive method for the
granular-ball generation is proposed by considering granular-ball's overlap
eliminating and some other factors. This makes the granular-ball generation
process of parameter-free and completely adaptive in the true sense. In
addition, this paper first provides the mathematical models for the
granular-ball covering. The experimental results on some real data sets
demonstrate that the proposed two granular-ball generation methods have similar
accuracies with the existing method while adaptiveness or acceleration is
realized. |
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DOI: | 10.48550/arxiv.2201.04343 |