基于文本分析的社交网络实时事件检测生成非参数模型

Masoumeh Aziziansiadar
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引用次数: 0

摘要

监控系统遵循的一件事是在社交网络的众多常见事件中实时检测罕见事件。考虑到罕见事件缺乏识别和不可获得性,它们的检测被认为是一项挑战。在本研究中,提出了一种基于生成对抗网络基础设施的新架构和方法来实时检测常见和罕见事件。在本研究中,尝试提供一种基于深度生成对抗网络的架构性能的新方法,一种通过半监督方法和对抗性生成基础设施解决各种无监督问题的方法。该体系结构是基于对视频输入数据特征的自动提取和利用。在UCSDped1和UCSDped2数据集上,错误率相等的结果在性能特征曲线上分别为2.0和17.0。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative and non-parametric model for real-time event detection in social networks based on textual analysis
One of the things that is followed in monitoring systems is the detection of rare events in real time among the multitude of common events in social networks. Considering the lack of recognition and unavailability of rare events, their detection is considered a challenge. In this research, a new architecture and approach based on generative adversarial network infrastructure was presented to detect common and rare events in real time. In this research, the attempt is to provide a new approach to the performance of architectures based on deep generative adversarial networks, a way to solve various problems without supervision with a semi-supervisory approach and adversarial generative infrastructure. This architecture is based on the automatic extraction and use of video input data features. The results of the equal error rate in the UCSDped1 and UCSDped2 datasets were 2.0 and 17.0, respectively, in the performance characteristic curve.
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