Kernel function-based interior-point algorithms for linear optimisation

B. Bounibane, E. A. Djeffal
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Abstract

We propose a primal-dual interior-point algorithm for linear optimisation based on a class of kernel functions which is eligible. New search directions and proximity measures are defined based on these functions. We derive the complexity bounds for large and small-update methods respectively. These are currently the best known complexity results for such methods.
基于核函数的内点线性优化算法
提出了一种基于核函数的原对偶内点线性优化算法。基于这些函数定义了新的搜索方向和接近度量。分别推导了大更新方法和小更新方法的复杂度界。这些是目前已知的此类方法的复杂度结果。
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