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Primal-dual interior-point methods for semidefinite programming in finite precision

机译:有限精度下半定规划的本原对偶内点法

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摘要

Recently, a number of primal-dual interior-point methods for semidefinite programming have been developed. To reduce the number of floating point operations, each iteration of these methods typically performs block Gaussian elimination with block pivots that are close to singular near the optimal solution. As a result, these methods often exhibit complex numerical properties in practice. We consider numerical issues related to some of these methods. Our error analysis indicates that these methods could be numerically stable if certain coefficient matrices associated with the iterations are well-conditioned, but are unstable otherwise. With this result, we explain why one particular method, the one introduced by Alizadeh, Haeberly, and Overton is in general more stable than others. We also explain why the so-called least squares variation, introduced for some of these methods, does not yield more numerical accuracy in general. Finally, we present results from our numerical experiments to support our analysis. [References: 35]
机译:近来,已经开发出许多用于半定编程的原始对偶内点方法。为了减少浮点运算的数量,这些方法的每次迭代通常使用块枢轴执行块高斯消除,该块枢轴在最佳解附近接近奇异点。结果,这些方法在实践中经常表现出复杂的数值特性。我们考虑与其中一些方法有关的数值问题。我们的误差分析表明,如果与迭代相关的某些系数矩阵条件良好,则这些方法在数值上可能是稳定的,否则不稳定。通过此结果,我们解释了为什么一种特定的方法(通常由Alizadeh,Haeberly和Overton引入)比其他方法更稳定。我们还解释了为什么对这些方法中的某些方法引入的所谓的最小二乘法通常不会产生更高的数值精度。最后,我们提出了数值实验的结果以支持我们的分析。 [参考:35]

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