备选成本模型下基于上下文的列表更新问题算法

Shahin Kamali, Susana Ladra, A. López-Ortiz, Diego Seco
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引用次数: 6

摘要

列表更新问题是一个在线问题,在数据压缩中有直接的应用。尽管Sleator & Tarjan提出的模型已经成为该问题领域的标准,但其在某些领域的适用性,特别是在压缩目的方面,仍受到质疑。在本文中,我们重点讨论了两种替代模型,这些模型可以说比标准模型更具有实际意义。我们为这些模型提供了新的算法,并证明这些算法在所讨论的模型下优于所有经典算法。这是通过对这些算法在列表更新问题的参考数据集上的性能进行实证研究来完成的。本文提出的算法利用了基于上下文的压缩策略,这在之前的列表更新问题中没有被考虑过,并导致了改进的压缩算法。此外,我们还研究了这些算法对不同参考局部性和可压缩性度量的适应性。
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Context-Based Algorithms for the List-Update Problem under Alternative Cost Models
The List-Update Problem is a well studied online problem with direct applications in data compression. Although the model proposed by Sleator & Tarjan has become the standard in the field for the problem, its applicability in some domains, and in particular for compression purposes, has been questioned. In this paper, we focus on two alternative models for the problem that arguably have more practical significance than the standard model. We provide new algorithms for these models, and show that these algorithms outperform all classical algorithms under the discussed models. This is done via an empirical study of the performance of these algorithms on the reference data set for the list-update problem. The presented algorithms make use of the context-based strategies for compression, which have not been considered before in the context of the list-update problem and lead to improved compression algorithms. In addition, we study the adaptability of these algorithms to different measures of locality of reference and compressibility.
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