集压缩的注意事项和算法

N. Larsson
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引用次数: 1

摘要

我们考虑不同元素的无序集的压缩,特别关注在存在统计信息的情况下压缩固定长度的位串集。我们解决了以前的工作,并概述了一种新的压缩算法,该算法允许透明地合并各种概率分布估计。实验得出结论,集合压缩可以受益于结合统计,使用我们的方法或变体的先前已知的技术。
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Considerations and Algorithms for Compression of Sets
We consider compression of unordered sets of distinct elements, focusing particularly on compressing sets of fixed-length bit strings in the presence of statistical information. We address previous work, and outline a novel compression algorithm that allows transparent incorporation of various estimates for probability distribution. Experiments allow the conclusion that set compression can benefit from incorporating statistics, using our method or variants of previously known techniques.
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