第五届教育创新与多媒体技术国际学术会议(EIMT 2026)将于2026年3月27-29日在中国兰州召开。 Scopus 期刊征稿 (JA) 期刊将通过会议征集并评判符合发表标准的文章,符合的文章将发表至对应期刊 期刊名称:《国际评估与教育研究杂志》 International Journal of Evaluation and Research
【IEEE出版,ICSGGE 2025 会后不到4个月EI检索 | 中国工程院院士线下报告指导】 第五届智能电网和绿色能源国际学术会议 (ICSGGE 2026) 会议时间地点:2026年3月20-22日 | 中国·海南省·东方市 大会官网:www.icsgge.org【详情】 主办单位:IEEE、IEEE Power & Energy Soc
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Community is the implicit structure in social networks. In academic social networks, the users with similar or same research interests are more likely to be in the same community with close links and similar attributes. Effective community detection results can be further utilized for user analytics and user recommendation.
Anomaly detection on attributed networks is an important task in social network analysis. The goal is to find the anomalies that deviate significantly from the majority of the network in terms of some proximities, e.g. topological structure or attribute proximity. An effective anomaly detection can support many applications such as web spam detection, system fraud detection, network intrusion detection and representation learning.
Most of the existing recommendation methods assume that all the items are provided by separate producers, which is however not true in some recommendation tasks. That is, it is possible that some of the items are generated by users. Appropriately considering the user-item generation relation may bring benefit to some recommender systems, e.g., implicit recommender systems with only implicit user-item interactions.
The SCHOLAT Multiplex Network provides a comprehensive list of social information. In this network, we construct a multiplex structure with three layers: (1) The first layer represents connections between users who become friends. (2) The second layer represents connections between users who join the same groups. (3) The third layer represents connections between users who study the same courses. Furthermore, we define an individual ground-truth community based on the affiliation of users. All layers consist of the same 2,302 nodes with the highest quality. Each layer has a specific number of edges: 11,393 for the first layer, 139,004 for the second layer, and 70,226 for the third layer. We have divided these nodes into 11 communities.
开放数据 - 通过SCHOLAT数据进一步推动你的研究