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Low-Precision Random Fourier Features for Memory-constrained Kernel Approximation

机译:内存受限内核近似的低精度随机傅里叶特征

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We investigate how to train kernel approximation methods that generalize well under a memory budget. Building on recent theoretical work, we define a measure of kernel approximation error which we find to be more predictive of the empirical generalization performance of kernel approximation methods than conventional metrics. An important consequence of this definition is that a kernel approximation matrix must be high rank to attain close approximation. Because storing a high-rank approximation is memory intensive, we propose using a low-precision quantization of random Fourier features (LP-RFFs) to build a high-rank approximation under a memory budget. Theoretically, we show quantization has a negligible effect on generalization performance in important settings. Empirically, we demonstrate across four benchmark datasets that LP-RFFs can match the performance of full-precision RFFs and the Nystr?m method, with 3x-10x and 50x-460x less memory, respectively.
机译:我们研究如何训练在内存预算下能很好地推广的内核近似方法。在最近的理论工作的基础上,我们定义了核逼近误差的度量,我们发现该度量比常规度量标准更能预测核逼近方法的经验概括性能。该定义的重要结果是,内核逼近矩阵必须具有较高的秩才能获得逼近。由于存储高阶近似值会占用大量内存,因此我们建议使用随机傅里叶特征(LP-RFF)的低精度量化在内存预算下构建高阶近似值。从理论上讲,我们表明量化对重要设置下的泛化性能影响可忽略不计。从经验上讲,我们在四个基准数据集中展示了LP-RFF可以与全精度RFF和Nystr?m方法的性能相匹配,分别减少了3x-10x和50x-460x的内存。

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