Deep Learning–based Dynamic User Alignment in Social Networks

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
K. Matrouk, Srikanth V, Sumit Kumar, Mohit Kumar Bhadla, Mirza Sabirov, M. Saadh
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引用次数: 0

Abstract

Academics and businesses are paying intense attention to social network alignment, which centers various social networks around their shared members. All studies to date treat the social network as static and ignore its innate dynamism. In reality, an individual's discriminative pattern is embedded in the dynamics of social networks, and this information may be used to improve social network alignment. This study finds that these dynamics can reveal more apparent patterns better suited to lining up the social web of things (SWoT). The correlation between the user structure and attributes for each social network must be maintained to combine the binary dynamics and make the original synthetic embedding representation. Finally, the initial embedding of each network is projected to a target subspace as part of the semi-supervised spatial transformation learning process. The Dynamic Social Network Alignment approach outperforms the current mainstream algorithm by 10% in this article's extensive series of trials using real-world datasets. The findings of this study show that this alignment of enormous networks addresses the volume, variety, velocity, and veracity (or 4Vs) of vast networks. To improve the efficacy and resilience of an adversarial network alignment, adversarial learning techniques can be applied. The results show that the model with structure, attribute, and time information performs the best, while the model without attribute information comes in second, the model without time information performs mediocrely, and the model without structure information performs the worst.
基于深度学习的社交网络动态用户对齐
学术界和企业界都在密切关注社会网络的一致性,即各种社会网络围绕着共享的成员。迄今为止,所有的研究都将社交网络视为静态的,而忽略了其内在的动态性。在现实中,个体的判别模式嵌入在社会网络的动态中,这些信息可以用来改善社会网络的一致性。这项研究发现,这些动态可以揭示更明显的模式,更适合排列社交网络的事物(SWoT)。必须保持各社交网络用户结构与属性之间的相关性,结合二元动态,得到原始的综合嵌入表示。最后,将每个网络的初始嵌入投影到目标子空间,作为半监督空间转换学习过程的一部分。在本文使用真实世界数据集进行的广泛系列试验中,动态社会网络对齐方法比当前主流算法高出10%。这项研究的结果表明,这种庞大网络的对齐解决了庞大网络的数量、种类、速度和准确性(或4v)。为了提高对抗性网络对齐的有效性和弹性,可以应用对抗性学习技术。结果表明,包含结构、属性和时间信息的模型性能最好,不包含属性信息的模型性能次之,不包含时间信息的模型性能一般,不包含结构信息的模型性能最差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACM Journal of Data and Information Quality
ACM Journal of Data and Information Quality COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.10
自引率
4.80%
发文量
0
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