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On the Structure of Reduced Kernel Lattice Bases

机译:简化核格点基的结构

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Lattice-based reformulation techniques have been used successfully both theoretically and computationally. One such reformulation is obtained from the lattice kerz(A) = {x ∈ Z~n | Ax = 0}. Some of the hard instances in the literature that have been successfully tackled by lattice-based techniques, such as market split and certain classes of knapsack instances, have randomly generated input A. These instances have been posed to stimulate algorithmic research. Since the considered instances are very hard even in low dimension, less experience is available for larger instances. Recently we have studied larger instances and observed that the LLL-reduced basis of kerz(A) has a specific sparse structure. In particular, this translates into a map in which some of the original variables get a "rich" translation into a new variable space, whereas some variables sire only substituted in the new space. If an original variable is important in the sense of branching or cutting planes, this variable should be translated in a non-trivial way. In this paper we partially explain the obtained structure of the LLL-reduced basis in the case that the input matrix A consists of one row a. Since the input is randomly generated our analysis will be probabilistic. The key ingredient is a bound on the probability that the LLL algorithm will interchange two subsequent basis vectors. It is worth noticing that computational experiments indicate that the results of this analysis seem to apply in the same way also in the general case that A consists of multiple rows. Our analysis has yet to be extended to this general case. Along with our analysis we also present some computational indications that illustrate that the probabilistic analysis conforms well with the practical behavior.
机译:基于晶格的重构技术已在理论和计算上得到成功使用。从晶格kerz(A)= {x∈Z〜n | Ax = 0}。文献中一些已经通过基于格的技术成功解决的难题,例如市场拆分和特定类别的背包实例,已经随机生成了输入A。这些实例被认为可以促进算法研究。由于考虑到的实例即使在低尺寸的情况下也非常困难,因此对于较大的实例,经验不足。最近,我们研究了更大的实例,并观察到kerz(A)的LLL减少基具有特定的稀疏结构。特别是,这会转换为映射,在映射中某些原始变量将“丰富​​”转换为新变量空间,而某些变量仅在新空间中被替换。如果原始变量在分支或切割平面的意义上很重要,则应以不平凡的方式转换该变量。在本文中,我们将部分解释在输入矩阵A包含一行a的情况下获得的LLL约简基础的结构。由于输入是随机生成的,因此我们的分析将是概率性的。关键因素是LLL算法将交换两个后续基向量的概率的界限。值得注意的是,计算实验表明,这种分析结果似乎也适用于A包含多行的一般情况。我们的分析尚未扩展到这种一般情况。除了我们的分析外,我们还提供了一些计算指标,这些迹象表明概率分析与实际行为非常吻合。

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