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Random Feature Mapping with Signed Circulant Matrix Projection

机译:随符号循环矩阵投影的随机特征映射

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Random feature mappings have been successfully used for approximating non-linear kernels to scale up kernel methods. Some work aims at speeding up the feature mappings, but brings increasing variance of the approximation. In this paper, we propose a novel random feature mapping method that uses a signed Circulant Random Matrix (CRM) instead of an unstructured random matrix to project input data. The signed CRM has linear space complexity as the whole signed CRM can be recovered from one column of the CRM, and ensures loglinear time complexity to compute the feature mapping using the Fast Fourier Transform (FFT). Theoretically, we prove that approximating Gaussian kernel using our mapping method is unbiased and does not increase the variance. Experimentally, we demonstrate that our proposed mapping method is time and space efficient while retaining similar accuracies with state-of-the-art random feature mapping methods. Our proposed random feature mapping method can be implemented easily and make kernel methods scalable and practical for large scale training and predicting problems.
机译:随机特征映射已成功用于近似非线性内核以扩展内核方法。一些工作旨在加速特征映射,但带来近似值的越来越差异。在本文中,我们提出了一种新的随机特征映射方法,该方法使用符号循环随机矩阵(CRM)而不是非结构化随机矩阵到项目输入数据。符号CRM具有线性空间复杂性,因为整个符号CRM可以从CRM的一列恢复,并确保使用快速傅里叶变换(FFT)计算要计算特征映射的记录时间复杂度。从理论上讲,我们证明了使用我们的映射方法近似高斯内核是无偏的,并且不会增加方差。通过实验,我们证明了我们所提出的映射方法是时间和空间高效,同时保持与最先进的随机特征映射方法的类似精度。我们所提出的随机特征映射方法可以轻松实现,使内核方法可扩展,实用,用于大规模培训和预测问题。

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