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Do, 2015 - Google Patents

Non-linear classification of massive datasets with a parallel algorithm of local support vector machines

Do, 2015

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Document ID
14235386209606892237
Author
Do T
Publication year
Publication venue
Advanced Computational Methods for Knowledge Engineering: Proceedings of 3rd International Conference on Computer Science, Applied Mathematics and Applications-ICCSAMA 2015

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Snippet

We propose a new parallel algorithm of local support vector machines, called kSVM for the effectively non-linear classification of large datasets. The learning strategy of kSVM uses k means algorithm to partition the data into k clusters, followed which it constructs a non-linear …
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