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Compression of Biological Networks using a Genetic Algorithm with Localized Merge

机译:使用局部合并遗传算法压缩生物网络

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Network graphs appear in a number of important biological data problems, recording information relating to protein-protein interactions, gene regulation, transcription regulation and much more. These graphs are of such a significant size that they are impossible for a human to understand. Furthermore, the ever-expanding quantity of such information means that there are storage issues. To help address these issues, it is common for applications to compress nodes to form supernodes of similarly connected components. In previous graph compression studies it was noted that such supernodes often contain points from disparate parts of the graph. This study aims to correct this flaw by only allowing merges to occur within a local neighbourhood rather than across the entire graph. This restriction was found to not only produce more meaningful compressions, but also to reduce the overall distortion created by the compression for two out of three biological networks studied.
机译:网络图出现在许多重要的生物学数据问题中,记录了与蛋白质-蛋白质相互作用,基因调控,转录调控等相关的信息。这些图的大小很大,以致于人类无法理解。此外,此类信息的数量不断增加,这意味着存在存储问题。为了帮助解决这些问题,应用程序通常会压缩节点以形成具有相似连接的组件的超节点。在先前的图压缩研究中,注意到这样的超节点通常包含来自图的不同部分的点。这项研究旨在通过仅允许合并发生在本地邻域而不是整个图形中来纠正此缺陷。发现该限制不仅产生了更有意义的压缩,而且还减少了所研究的三个生物网络中有两个的压缩所产生的整体失真。

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