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Infrastructure Pattern Discovery in Configuration Management Databases via Large Sparse Graph Mining

机译:通过大型稀疏图挖掘在配置管理数据库中发现基础结构模式

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A configuration management database (CMDB) can be considered to be a large graph representing the IT infrastructure entities and their inter-relationships. Mining such graphs is challenging because they are large, complex, and multi-attributed, and have many repeated labels. These characteristics pose challenges for graph mining algorithms, due to the increased cost of sub graph isomorphism (for support counting), and graph isomorphism (for eliminating duplicate patterns). The notion of pattern frequency or support is also more challenging in a single graph, since it has to be defined in terms of the number of its (potentially, exponentially many) embeddings. We present CMDB-Miner, a novel two-step method for mining infrastructure patterns from CMDB graphs. It first samples the set of maximal frequent patterns, and then clusters them to extract the representative infrastructure patterns. We demonstrate the effectiveness of CMDB-Miner on real-world CMDB graphs.
机译:配置管理数据库(CMDB)可以视为代表IT基础架构实体及其相互关系的大图。挖掘此类图非常具有挑战性,因为它们很大,很复杂且具有多个属性,并且具有很多重复的标签。由于子图同构(用于支持计数)和图同构(用于消除重复模式)的成本增加,这些特征给图挖掘算法带来了挑战。模式频率或支持的概念在单个图表中也更具挑战性,因为必须根据其嵌入数量(可能是指数个数)来定义。我们介绍了CMDB-Miner,这是一种用于从CMDB图中挖掘基础设施模式的新颖的两步方法。它首先对最大频繁模式集进行采样,然后将它们聚类以提取代表性的基础架构模式。我们在实际的CMDB图上证明CMDB-Miner的有效性。

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