首页> 外文期刊>Applied Network Science >Overlapping community finding with noisy pairwise constraints
【24h】

Overlapping community finding with noisy pairwise constraints

机译:重叠的社区用嘈杂的成对约束

获取原文
获取外文期刊封面目录资料

摘要

In many real applications of semi-supervised learning, the guidance provided by a human oracle might be “noisy” or inaccurate. Human annotators will often be imperfect, in the sense that they can make subjective decisions, they might only have partial knowledge of the task at hand, or they may simply complete a labeling task incorrectly due to the burden of annotation. Similarly, in the context of semi-supervised community finding in complex networks, information encoded as pairwise constraints may be unreliable or conflicting due to the human element in the annotation process. This study aims to address the challenge of handling noisy pairwise constraints in overlapping semi-supervised community detection, by framing the task as an outlier detection problem. We propose a general architecture which includes a process to “clean” or filter noisy constraints. Furthermore, we introduce multiple designs for the cleaning process which use different type of outlier detection models, including autoencoders. A comprehensive evaluation is conducted for each proposed methodology, which demonstrates the potential of the proposed architecture for reducing the impact of noisy supervision in the context of overlapping community detection.
机译:在半监督学习的许多真正应用中,人类甲骨文提供的指导可能是“嘈杂”或不准确的。人类的注释经常是不完善的,从而在他们可以做出主观决策的情况下,他们可能只会在手头的任务中进行部分了解,或者由于注释的负担,他们可能只会错误地完成标签任务。类似地,在半监督社区在复杂网络中找到的上下文中,由于注释过程中的人为元素,编码为成对约束的信息可能是不可靠的或冲突。本研究旨在解决在重叠半监督社区检测中处理嘈杂成对约束的挑战,通过将任务绘制作为异常检测问题。我们提出了一种综合架构,包括“清洁”或过滤噪声约束的过程。此外,我们为清洁过程引入了多种设计,该过程使用不同类型的异常检测模型,包括AutoEncoders。针对每个提出的方法进行综合评估,该方法表明了拟议的架构在重叠社区检测范围内降低嘈杂监管的影响。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号