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A Linearly Convergent Linear-Time First-Order Algorithm for Support Vector Classification with a Core Set Result

机译:具有核心集结果的支持向量分类的线性收敛线性时间一阶算法

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We present a simple first-order approximation algorithm for the support vector classification problem. Given a pair of linearly separable data sets and e e (0,1), the proposed algorithm computes a separating hyper-plane whose margin is within a factor of (1 — e) of that of the maximum-margin separating hyperplane. We discuss how our algorithm can be extended to nonlinearly separable and inseparable data sets. The running time of our algorithm is linear in the number of data points and in 1/e. In particular, the number of support vectors computed by the algorithm is bounded above by O(ζ/ε) for all sufficiently small ε > 0, where ζ is the square of the ratio of the distances between the farthest and closest pairs of points in the two data sets. Furthermore, we establish that our algorithm exhibits linear convergence. Our computational experiments, presented in the online supplement, reveal that the proposed algorithm performs quite well on standard data sets in comparison with other first-order algorithms. We adopt the real number model of computation in our analysis.
机译:对于支持向量分类问题,我们提出了一种简单的一阶近似算法。给定一对线性可分离的数据集和e e(0,1),提出的算法计算出一个分离的超平面,其裕度在最大裕度分离的超平面的裕度的(1- e)范围内。我们讨论了如何将我们的算法扩展到非线性可分离和不可分离的数据集。我们的算法的运行时间在数据点数和1 / e中呈线性关系。特别是,对于所有足够小的ε> 0,由算法计算的支持向量的数量在上面都由O(ζ/ε)界定,其中ζ是点中最远点与最接近点对之间的距离之比的平方这两个数据集。此外,我们确定我们的算法表现出线性收敛性。在线补编中介绍的我们的计算实验表明,与其他一阶算法相比,该算法在标准数据集上的性能很好。我们在分析中采用计算的实数模型。

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