论文标题
图生成器:艺术和开放挑战
Graph Generators: State of the Art and Open Challenges
论文作者
论文摘要
丰富的互连数据推动了链接属性的图形生成器的设计和实现,或者衡量了操纵这些数据的图形算法,技术和应用程序的有效性。我们考虑跨多个子字段的图形生成,例如语义网络,图形数据库,社交网络和社区检测以及一般图形。尽管在这些社区中,现代图生成器的要求不同,但我们仍在共同的保护伞下分析它们,伸出功能,实际用法及其支持的操作。我们认为,这种分类是满足了为科学家,研究人员和从业人员提供合适的数据生成器的工作。这项调查通过专注于相关且适合多个数据密集型任务的调查来全面概述最先进的图形生成器。最后,我们讨论了当前的图形生成器的开放挑战和缺失的要求,以及他们将来的扩展到新的新兴领域。
The abundance of interconnected data has fueled the design and implementation of graph generators reproducing real-world linking properties, or gauging the effectiveness of graph algorithms, techniques and applications manipulating these data. We consider graph generation across multiple subfields, such as Semantic Web, graph databases, social networks, and community detection, along with general graphs. Despite the disparate requirements of modern graph generators throughout these communities, we analyze them under a common umbrella, reaching out the functionalities, the practical usage, and their supported operations. We argue that this classification is serving the need of providing scientists, researchers and practitioners with the right data generator at hand for their work. This survey provides a comprehensive overview of the state-of-the-art graph generators by focusing on those that are pertinent and suitable for several data-intensive tasks. Finally, we discuss open challenges and missing requirements of current graph generators along with their future extensions to new emerging fields.