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Gradient projection methods for quadratic programs and applications in training support vector machines

机译:用于二次程序的梯度投影方法及其在训练支持向量机中的应用

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Gradient projection methods based on the Barzilai-Borwein spectral steplength choices are considered for quadratic programming (QP) problems with simple constraints. Well-known nonmonotone spectral projected gradient methods and variable projection methods are discussed. For both approaches, the behavior of different combinations of the two spectral steplengths is investigated. A new adaptive steplength alternating rule is proposed, which becomes the basis for a generalized version of the variable projection method (GVPM). Convergence results are given for the proposed approach and its effectiveness is shown by means of an extensive computational study on several test problems, including the special quadratic programs arising in training support vector machines (SVMs). Finally, the GVPM behavior as inner QP solver in decomposition techniques for large-scale SVMs is also evaluated.
机译:对于具有简单约束的二次规划(QP)问题,考虑使用基于Barzilai-Borwein谱步长选择的梯度投影方法。讨论了众所周知的非单调谱投影梯度方法和可变投影方法。对于这两种方法,都研究了两个光谱步长的不同组合的行为。提出了一种新的自适应步长交替规则,该规则成为可变投影方法(GVPM)通用版本的基础。给出了该方法的收敛结果,并通过对几个测试问题的广泛计算研究,包括在训练支持向量机(SVM)中产生的特殊二次程序,证明了其有效性。最后,还评估了GVPM在大规模SVM分解技术中作为内部QP求解器的行为。

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