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A new ECG beat clustering method based on kernelized fuzzy c-means and hybrid ant colony optimization for continuous domains
2012
Applied Soft Computing
The kernelized fuzzy c-means algorithm uses kernel methods to improve the clustering performance of the well known fuzzy c-means algorithm by mapping a given dataset into a higher dimensional space non-linearly. Thus, the newly obtained dataset is more likely to be linearly seprable. However, to further improve the clustering performance, an optimization method is required to overcome the drawbacks of the traditional algorithms such as, sensitivity to initialization, trapping into local minima
doi:10.1016/j.asoc.2012.07.007
fatcat:uqnqsdhm2rgyfgvqbb4f7izifu