A Space Efficient Scheme for Persistent Graph Representation

Stavros Kontopoulos, G. Drakopoulos
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引用次数: 22

Abstract

Graph mining is currently the focus of intense research. Major driving factors include social media, opinion mining, and the schemaless noSQL databases. Time evolving or dynamic graphs are the primary data structures in these fields. Often dynamic graphs must support persistency, meaning that from any given graph state past states can be accessed. Within the graph database context, persistency enables rollback capability, whereas in social media several phenomena such as friend deletion can be modeled. A novel, efficient, and persistent data structure based on tries is proposed. Its potential is displayed by added persistency to the deterministic Kronecker graph model.
持久图表示的空间高效方案
图挖掘是当前研究的热点。主要的驱动因素包括社交媒体、意见挖掘和无模式noSQL数据库。时间演化图或动态图是这些领域的主要数据结构。动态图通常必须支持持久性,这意味着可以从任何给定的图状态访问过去的状态。在图形数据库上下文中,持久性支持回滚功能,而在社交媒体中,可以对好友删除等几种现象进行建模。提出了一种新颖、高效、持久的基于尝试的数据结构。它的潜力通过向确定性Kronecker图模型添加持久性来显示。
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