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Big Graph Mining: Frameworks and Techniques

机译:大图挖掘:框架和技术

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摘要

Big graph mining is an important research area and it has attracted considerable attention. It allows to process, analyze, and extract meaningful information from large amounts of graph data. Big graph mining has been highly motivated not only by the tremendously increasing size of graphs but also by its huge number of applications. Such applications include bioinformatics, chemoinformatics and social networks. One of the most challenging tasks in big graph mining is pattern mining in big graphs. This task consists on using data mining algorithms to discover interesting, unexpected and useful patterns in large amounts of graph data. It aims also to provide deeper understanding of graph data. In this context, several graph processing frameworks and scaling data mining/pattern mining techniques have been proposed to deal with very big graphs. This paper gives an overview of existing data mining and graph processing frameworks that deal with very big graphs. Then it presents a survey of current researches in the field of data mining/pattern mining in big graphs and discusses the main research issues related to this field. It also gives a categorization of both distributed data mining and machine learning techniques, graph processing frameworks and large scale pattern mining approaches.
机译:大图挖掘是一个重要的研究领域,受到了广泛的关注。它允许处理,分析和从大量图形数据中提取有意义的信息。大图挖掘不仅受到图的巨大增长而且其大量应用的极大推动。这样的应用包括生物信息学,化学信息学和社交网络。大图挖掘中最具挑战性的任务之一是大图的模式挖掘。该任务包括使用数据挖掘算法来发现大量图形数据中有趣,意外和有用的模式。它还旨在提供对图形数据的更深入的了解。在这种情况下,已经提出了几种图形处理框架和缩放数据挖掘/模式挖掘技术来处理非常大的图形。本文概述了处理非常大的图的现有数据挖掘和图处理框架。然后以大图的形式概述了数据挖掘/模式挖掘领域的最新研究,并讨论了与该领域相关的主要研究问题。它还对分布式数据挖掘和机器学习技术,图处理框架和大规模模式挖掘方法进行了分类。

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