Comment on "Clustering by fast search and find of density peaks"
Abstract
In [1], a clustering algorithm was given to find the centers of clusters quickly. However, the accuracy of this algorithm heavily depend on the threshold value of d-c. Furthermore, [1] has not provided any efficient way to select the threshold value of d-c, that is, one can have to estimate the value of dc depend on one's subjective experience. In this paper, based on the data field [2], we propose a new way to automatically extract the threshold value of dc from the original data set by using the potential entropy of data field. For any data set to be clustered, the most reasonable value of dc can be objectively calculated from the data set by using our proposed method. The same experiments in [1] are redone with our proposed method on the same experimental data set used in [1], the results of which shows that the problem to calculate the threshold value of dc in [1] has been solved by using our method.
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