Searching for expertise in social networks: a simulation of potential strategies

Jun Zhang, M. Ackerman
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引用次数: 119

Abstract

People search for people with suitable expertise all of the time in their social networks - to answer questions or provide help. Recently, efforts have been made to augment this searching. However, relatively little is known about the social characteristics of various algorithms that might be useful. In this paper, we examine three families of searching strategies that we believe may be useful in expertise location. We do so through a simulation, based on the Enron email data set. (We would be unable to suitably experiment in a real organization, thus our need for a simulation.) Our emphasis is not on graph theoretical concerns, but on the social characteristics involved. The goal is to understand the tradeoffs involved in the design of social network based searching engines.
在社交网络中寻找专业知识:潜在策略的模拟
人们一直在他们的社交网络中寻找具有合适专业知识的人,以回答问题或提供帮助。最近,人们正在努力扩大这种搜索。然而,人们对各种可能有用的算法的社会特征所知相对较少。在本文中,我们研究了三种我们认为可能对专家定位有用的搜索策略。我们通过基于安然电子邮件数据集的模拟来做到这一点。(我们将无法在真实的组织中进行适当的实验,因此我们需要模拟。)我们的重点不是图的理论问题,而是所涉及的社会特征。我们的目标是理解基于社交网络的搜索引擎设计中所涉及的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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