NetDriller版本2:一个强大的社会网络分析工具

Salim Afra, Tansel Özyer, J. Rokne
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引用次数: 3

摘要

自从Web 2.0出现并为双向交互平台提供了基础以来,社会网络分析获得了相当大的关注。直接的结果是原始数据集的可用性,这些数据集反映了不同实体之间的社会互动。事实上,社交网络平台和其他通信设备正在产生大量的数据,这些数据构成了知识发现的宝贵来源。因此,需要像NetDriller这样的自动化工具,能够最大限度地从网络数据中获益。大多数反映多对多关系的数据集都可以表示为一个网络,这个网络是由相互之间有关系的行动者组成的图。许多网络分析工具都是从已构建的网络中提取知识的。然而,这些工具中的大多数都要求用户准备一个数据集作为输入,该数据集可以激发完整的网络,然后由工具使用支持的措施显示和分析。NetDriller采用了不同的观点来开发网络构建和分析工具,它可以完成一些现有工具通常无法完成的任务。NetDriller通过使用数据挖掘技术从原始数据构建网络,弥补了其他工具存在的不足。在本文中,我们描述了NetDriller的第二版,该版本最近进行了改进,增加了新的功能,以实现更丰富、更有效的网络构建和分析。这使该工具保持最新状态,并具有处理大量网络和可用于分析的不同类型原始数据的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NetDriller Version 2: A Powerful Social Network Analysis Tool
Social network analysis has gained considerable attention since Web 2.0 emerged and provided the ground for two-ways interaction platforms. The immediate outcome is the availability of raw datasets which reflect social interactions between various entities. Indeed, social networking platforms and other communication devices are producing huge amounts of data which form valuable sources for knowledge discovery. Hence the need for automated tools like NetDriller capable of successfully maximizing the benefit from networked data. Most datasets which reflect kind of many to many relationship can be represented as a network which is a graph consisting of actors having relationships among each other. Many tools exist for network analysis inspired to extract knowledge from a constructed network. However, most of these tools require users to prepare as input a dataset that inspires the complete network which is then displayed and analyzed by the tool using the measures supported. A different perspective has been employed to develop NetDriller as a network construction and analysis tool which does some tasks beyond what is normally available in existing tools. NetDriller covers the lack that exists in other tools by constructing a network from raw data using data mining techniques. In this paper, we describe the second version of NetDriller which has been recently improved by adding new functions for a richer and more effective network construction and analysis. This keeps the tool up to date and with high potential to handle the huge volume of networks and the different types of raw data available for analysis.
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