Jiawei Zhang, Philip S. Yu, Yuanhua Lv, Qianyi Zhan
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引用次数: 17
摘要
现在的人们每天都需要花费大量的时间在工作上,工作场所已经成为员工之间有效沟通和信息交换的重要社交场所。除了传统的在线联系(如面对面的会议和电话),为了方便员工之间的沟通和合作,许多公司在防火墙内部推出了一种新型的在线社交网络,称为“企业社交网络”(enterprise social networks,简称ESNs)。在本文中,我们想研究工作场所员工之间的信息传播通过在线esn和在线联系人。这被正式定义为IDE(企业信息扩散)问题。解决IDE问题需要解决以下几个挑战:(1)从在线ESN和在线联系人中提取扩散通道;(2)对不同传播渠道传递的信息进行有效聚合;(3)通信信道加权与选择。为了解决这些问题,本文提出了一种新的信息扩散模型Muse (Multi-source Multi-channel Multi-topic diffusion SElection)。在真实世界的ESN和组织结构图数据集上进行的大量实验表明,Muse在解决IDE问题方面表现出色。
People nowadays need to spend a large amount of time on their work everyday and workplace has become an important social occasion for effective communication and information exchange among employees. Besides traditional online contacts (e.g., face-to-face meetings and telephone calls), to facilitate the communication and cooperation among employees, a new type of online social networks has been launched inside the firewalls of many companies, which are named as the "enterprise social networks" (ESNs). In this paper, we want to study the information diffusion among employees at workplace via both online ESNs and online contacts. This is formally defined as the IDE (Information Diffusion in Enterprise) problem. Several challenges need to be addressed in solving the IDE problem: (1) diffusion channel extraction from online ESN and online contacts; (2) effective aggregation of the information delivered via different diffusion channels; and (3) communication channel weighting and selection. A novel information diffusion model, Muse (Multi-source Multi-channel Multi-topic diffUsion SElection), is introduced in this paper to resolve these challenges. Extensive experiments conducted on real-world ESN and organizational chart dataset demonstrate the outstanding performance of Muse in addressing the IDE problem.