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Relevant Window-Based Bitmap Compression in P2P Systems: Framework and Solution

机译:P2P系统中基于窗口的相关位图压缩:框架和解决方案

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摘要

P2P systems require neighbor peers to frequently exchange buffer-map (BM) messages for efficient content sharing and distribution, which, however, can result in considerable communication overhead. A big problem in the BMs exchanged between neighbor peers is that a lot of information in them is redundant. To reduce the redundancy, some P2P systems have adopted certain block-level compression schemes (e.g., Huffman encoding) to compress each BM in isolation. However, these schemes simply treat each BM separately and as a single block of data, which largely affects their compression efficiency. In this paper, we propose a novel relevant-window-based (RW) compression framework, which takes advantage of the correlation between sequentially exchanged BMs between neighbor peers and thus can greatly remove the redundancy in them. We accordingly design a RW-based distributed compression scheme, which can work alone or co-work well with an existing block-level compression scheme for higher compression efficiency. We prove the correctness of our scheme and derive tight upper bound on average length of compressed bitmaps by our scheme via mathematical modeling. Numerical results demonstrate that our scheme alone can achieve compression efficiency of 96.6%, which can be further increased to up to 97.1% when jointly working with a block-level compression scheme.
机译:P2P系统要求邻居对等方频繁交换缓冲区映射(BM)消息以进行有效的内容共享和分发,但是,这可能会导致可观的通信开销。邻居之间交换BM的一个大问题是它们中的许多信息都是多余的。为了减少冗余,一些P2P系统已经采用了某些块级压缩方案(例如,霍夫曼编码)来独立地压缩每个BM。但是,这些方案只是将每个BM分别作为一个数据块单独对待,这在很大程度上影响了其压缩效率。在本文中,我们提出了一种新颖的基于相关窗口的(RW)压缩框架,该框架利用了邻居之间顺序交换的BM之间的相关性,从而可以大大消除它们之间的冗余。因此,我们设计了基于RW的分布式压缩方案,该方案可以单独工作,也可以与现有的块级压缩方案很好地协同工作,以提高压缩效率。我们证明了该方案的正确性,并且通过数学建模,通过我们的方案得出了压缩位图的平均长度的严格上限。数值结果表明,仅我们的方案就可以实现96.6%的压缩效率,当与块级压缩方案联合使用时,可以进一步提高到97.1%。

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