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M-band Wavelet Kernels for Classical and Quantum SVM

机译:用于古典和量子SVM的M带小波核

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In this research, brand-new M-Band Wavelet Kernels within both classical and quantum environments are constructed for corresponding Support Vector Machines (SVM). Unlike kernels such as Gaussian RBF, our wavelet kernels in the classical case map the input space into a finite dimensional feature space of dimension 0(KN), where K is the M-Band Wavelet compact support constant and N is the dimension of the input space. However, the kernel expression is simplified under quantum environment so that the quantum wavelet kernel will map the same input space to the feature space of dimension 0(K) only. Moreover, it is assumed there are P training points, then the complexity upon the training data comes to 0(Nlog P). Compared with the classical method of complexity being 0(P2KN), there is an exponential speedup.
机译:在本研究中,在经典和量子环境中的全新M带小波核被构造用于相应的支持向量机(SVM)。与如高斯RBF等内核不同,我们在经典案例中的小波内核将输入空间映射到尺寸0的有限尺寸特征空间中(k n ),其中K是M带小波块载常数,n是输入空间的尺寸。然而,在量子环境下简化内核表达式,使得量子小波内核将仅将相同的输入空间映射到尺寸0(k)的特征空间。此外,假设存在P训练点,那么训练数据对0(NLOG P)的复杂性。与古典复杂性的方法相比为0(p 2 K. n ),有一个指数加速。

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