高效格约简更新和降龄方法及分析

Jaehyun Park, Y. Park
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引用次数: 1

摘要

本文提出了一种高效的列/行格约简(LR)更新和降年方法,并分析了它们的复杂性。著名的LLL算法,由Lenstra, Lenstra和Lov ' asz开发,被认为是一种LR方法。当在给定的格基矩阵H中添加或删除列或行时,所提出的更新和downdating方法修改了主要为具有H的LR计算的预处理矩阵,并提供了初始参数来有效地减少更新的格基矩阵。由于改进后的预处理矩阵保留了原始约简格基的信息,因此在进行约简格时可以消除冗余的计算复杂度。此外,还研究了所提方法的舍入误差分析。数值结果表明,所提出的方法大大减少了计算量,而在格基矩阵的条件数方面没有任何性能损失。
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EFFICIENT LATTICE REDUCTION UPDATING AND DOWNDATING METHODS AND ANALYSIS
In this paper, the efficient column-wise/row-wise lattice reduction (LR) updating and downdating methods are developed and their complexities are analyzed. The well-known LLL algorithm, developed by Lenstra, Lenstra, and Lov´asz, is considered as a LR method. When the column or the row is appended/deleted in the given lattice basis matrix H, the proposed updating and downdating methods modify the preconditioning matrix that is primarily computed for the LR with H and provide the initial parameters to reduce the updated lattice basis matrix efficiently. Since the modified preconditioning matrix keeps the information of the original reduced lattice bases, the redundant computational complexities can be eliminated when reducing the lattice by using the proposed methods. In addition, the rounding error analysis of the proposed methods is studied. The numerical results demonstrate that the proposed methods drastically reduce the computational load without any performance loss in terms of the condition number of the reduced lattice basis matrix.
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