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A unified complexity analysis of interior point methods for semidefinite problems based on trigonometric kernel functions

机译:基于三角核函数的半纤维问题的内部点方法统一复杂性分析

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摘要

In this paper, we present an interior-point algorithm for semidefinite optimization (SDO) problems based on a new generic trigonometric kernel function, which is constructed by introducing some new conditions on the kernel function. Based on these conditions, we propose a new trigonometric kernel function and present some properties of this function. We present some complexity results for the generic kernel function and prove that, a large-update primal-dual interior-point method for solving SDO problems with this new kernel function enjoys as worst case iteration complexity bound which matches the currently best known complexity bound for large update methods. Moreover, some numerical results show that the new proposed kernel function has better results than the other trigonometric kernel functions.
机译:在本文中,我们提出了一种基于新的通用三角内核函数的SemideFinite优化(SDO)问题的内部点算法,它是通过在内核函数上引入一些新条件来构造的。 基于这些条件,我们提出了一种新的三角内核功能,并呈现了此功能的一些属性。 我们向通用内核功能提出了一些复杂性结果,并证明,使用这种新的内核功能解决SDO问题的大型原始双重内部点方法享有最糟糕的迭代复杂性绑定,它与当前最佳已知的复杂性绑定绑定 大更新方法。 此外,一些数值结果表明,新的建议内核函数具有比其他三角内核功能更好的结果。

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