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A New Support Vector Compression Method Based on Singular Value Decomposition

机译:基于奇异值分解的新支持向量压缩方法

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In this letter, we propose a new compression method for a high dimensional support vector machine (SVM). We used singular value decomposition (SVD) to compress the norm part of a radial basis function SVM. By deleting the least significant vectors that are extracted from the decomposition, we can compress each vector with minimized energy loss. We select the compressed vector dimension according to the predefined threshold which can limit the energy loss to design criteria. We verified the proposed vector compressed SVM (VCSVM) for conventional datasets. Experimental results show that VCSVM can reduce computational complexity and memory by more than 40% without reduction in accuracy when classifying a 20,958 dimension dataset.
机译:在这封信中,我们为高维支持向量机(SVM)提出了一种新的压缩方法。我们使用奇异值分解(SVD)来压缩径向基函数SVM的规范部分。通过删除从分解中提取的最低有效载体,我们可以压缩具有最小化能量损耗的每个载体。我们根据预定义的阈值选择压缩的向量维度,这可以限制能量损耗来设计标准。我们验证了用于传统数据集的建议矢量压缩SVM(VCSVM)。实验结果表明,在分类20,958维数据集时,VCSVM可以减少计算复杂性和内存超过40%,而不会降低准确性。

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