Anomaly detection in attributed networks has received a considerable attention in recent years due to its applications in a wide range of domains such as finance, network security, and medicine. Traditional approaches cannot be adopted on attributed networks' settings to solve the problem of anomaly detection. The main limitation of such approaches is that they inherently ignore the relational information between data features. With a rapid explosion in deep learning- and graph neural networks-based techniques, spotting rare objects on attributed networks has significantly stepped forward owing to the potentials of deep techniques in extracting complex relationships. In this paper, we propose a new architecture on anomaly detection. The main goal of designing such an architecture is to utilize multi-task learning which would enhance the detection performance. Multi-task learning-based anomaly detection is still in its infancy and only a few studies in the existing literature have catered to the same. We incorporate both community detection and multi-view representation learning techniques for extracting distinct and complementary information from attributed networks and subsequently fuse the captured information for achieving a better detection result. The mutual collaboration between two main components employed in this architecture, i.e., community-specific learning and multi-view representation learning, exhibits a promising solution to reach more effective results.
翻译:近年来,由于在金融、网络安全和医学等广泛领域应用了相关技术,因此对相关网络的异常探测近年来受到相当重视。传统方法无法在相关网络环境中采用,以解决异常点探测问题。这些方法的主要局限性在于,它们本身就忽视了数据特征之间的联系信息。随着深层次学习和图形神经网络技术的迅速爆发,在相关网络上发现稀有物品的工作由于在提取复杂关系方面深层技术的潜力而大有进展。在本文中,我们提出了关于异常点探测的新结构。设计此类结构的主要目的是利用多种任务学习来提高检测性能。多任务学习性异常点探测仍处于初级阶段,现有文献中仅有少量研究满足了这些特点。我们纳入了社区探测和多视角介绍学习技术,以便从相关网络获取独特和互补的信息,并随后将所捕捉到的信息整合起来,从而取得更好的检测结果。我们在此文件中,我们提出了关于异常点探测结果的新结构中所使用的两个主要组成部分之间的相互合作,即社区特定学习和多视角学习,展示了一种有希望的解决办法,以取得更有效的结果。