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A NEW METHOD OF ELIMINATING NOISE BASED ON CLUSTERING

机译:一种基于聚类的消噪新方法

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摘要

Clustering is often constructed on noise-free datasets.In real-world applications, it is inevitable that the datasets contain noises, which may result in unsatisfactory results of the clustering algorithms.In this paper, several methods of reducing noises are systemic introduced, and at the first time we propose a heuristic algorithm of reducing noises in clustering theory (GK-means).The empirical results show that GK-means is simpler and more precise, and can handle noises in the real-world database effectively.Some samples are used to prove the validity of this algorithm.
机译:聚类通常是在无噪声的数据集上构建的,在实际应用中,数据集不可避免地会包含噪声,这可能会导致聚类算法的效果不理想。首次在聚类理论中提出了一种减少噪声的启发式算法(GK-means),实证结果表明,GK-means更简单,更精确,可以有效地处理现实数据库中的噪声。用来证明该算法的有效性。

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