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Kernel Combination Through Genetic Programming for Image Classification

机译:遗传规划的核组合在图像分类中的应用

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Support vector machine is a supervised learning technique which uses kernels to perform nonlinear separations of data. In this work, we propose a combination of kernels through genetic programming in which the individual fitness is obtained by a K-NN classifier using a kernel-based distance measure. Experiments have shown that our method KGP-K is much faster than other methods during training, but it is still able to generate individuals (i.e., kernels) with competitive performance (in terms of accuracy) to the ones that were produced by other methods. KGP-K produces reasonable kernels to use in the SVM with no knowledge about the distribution of data, even if they could be more complex than the ones generated by other methods and, therefore, they need more time during tests.
机译:支持向量机是一种监督学习技术,它使用内核执行数据的非线性分离。在这项工作中,我们提出了一种通过遗传编程的内核组合,其中个体适应性是通过K-NN分类器使用基于内核的距离度量来获得的。实验表明,我们的方法KGP-K在训练过程中比其他方法快得多,但是它仍然能够生成具有与其他方法相比具有竞争性能(就准确性而言)的个体(即内核)。 KGP-K可以生成合理的内核以在SVM中使用,而无需了解数据的分布,即使它们可能比其他方法生成的内核更复杂,因此它们在测试中也需要更多时间。

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