近日,华南师范大学计算机学院SCHOLAT数据智能团队两篇研究论文被数据库/数据挖掘领域CCF B类国际会议The 31st International Conference on Database Systems for Advanced Applications (DASFAA 2026)录用为短文 Regular Paper(长文)。 值得一提的是,两篇论文在2026年1月2
会议已上线IEEE官网: 【重要信息】 会议官网:https://www.yanfajia.com/action/p/D3BFGAP6 会议日期: 2026年3月27-29日 会议地点:中国 · 杭州 一轮截稿日期:2026年1月27日 接受或拒绝通知日期:提交后7个工作日 检索类型:EI Compendex、Scopus 会务秘书联系方式: 联系电话:19128
1月23日,国家自然科学基金委员会通报一批涉及科研不端行为和项目资金违规的案件,共20起。 通报详情如下: 近期,国家自然科学基金委员会经委务会议审定,对相关科研不端行为和项目资金违规案件涉事主体进行了处理。根据规定,现将有关情况通报如下: (一)北京某高校张红宇在2021年基金项目申请过程中存在向第三方公司购买申请书代写服务问题。依据《国家自然科学基金项目科研不端行为调查处理办法》(
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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