Bit allocation in sub-linear time and the multiple-choice knapsack problem

A. Mohr
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引用次数: 21

Abstract

We show that the problem of optimal bit allocation among a set of independent discrete quantizers given a budget constraint is equivalent to the multiple choice knapsack problem (MCKP). This result has three implications: first, it provides a trivial proof that the problem of optimal bit allocation is NP-hard and that its related decision problem is NP-complete; second, it unifies research into solving these problems that has to date been done independently in the data compression community and the operations research community; third, many practical algorithms for approximating the optimal solution to MCKP can be used for bit allocation. We implement the GBFOS, partition-search, and Dudzinski-Walukiewicz algorithms and compare their running times for a variety of problem sizes.
次线性时间内的位分配与多选题背包问题
我们证明了在给定预算约束的一组独立离散量化器之间的最优位分配问题等价于多选择背包问题(MCKP)。这一结果有三个意义:第一,它提供了一个平凡的证明,即最优位分配问题是np困难的,其相关的决策问题是np完全的;其次,它将数据压缩界和运筹学界迄今为止独立完成的研究统一起来解决这些问题;第三,许多实用的逼近MCKP最优解的算法可用于位分配。我们实现了GBFOS、分区搜索和Dudzinski-Walukiewicz算法,并比较了它们在不同问题规模下的运行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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