科研人员在日常学习和研究中,常常会遇到一个问题:去哪里可以找到可靠的学术会议信息?怎样高效展示个人成果、拓展学术合作?在知乎、小红书和微信公众号等平台上,不少用户都给出了同一个答案——学者网。 在 小红书 上,部分硕博用户将学者网作为查找学术会议信息的工具。他们表示,通过学者网能够更集中地获取较为可靠的会议信息,在准备论文或申请参会时减少了筛选成本。与此同时,在一些学术会
8月21日,教育部发布《关于第三批国家级一流本科课程认定结果的公示》。经有关部门组织网络评审和会议评审,共有5999门课程拟认定为第三批国家级一流本科课程。 根据《教育部关于一流本科课程建设的实施意见》(教高〔2019〕8号)和《教育部办公厅关于开展第三批国家级一流本科课程认定工作的通知》(教高厅函〔2023〕24号)的有关要求,经有关部门(单位)教育司(局)、各省级教育行政部门和高校申报推荐,
【新智元导读】2025年ACL盛会于维也纳落下帷幕!今年会议规模空前,投稿量超过8000篇,其中超半数作者来自中国。4篇最佳论文中,出自中国团队之手的同样占到50%——分别是北大与DeepSeek合作、梁文锋署名的NSA论文,以及北大杨耀东团队揭示模型存在「抗改造」基因的论文。 2025年7月30日,奥地利维也纳,万众瞩目ACL 2025终于颁奖了! 本届ACL总投稿数
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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