Jun Ge, Lei-lei Shi, Lu liu, Zi-xuan Han, Anthony Miller
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Specifically, the DIEET model incorporates the interval time, the number of times, the sequence interval time, and finally user preference for the event of interest, greatly improving the accuracy and efficiency of event evolution prediction. The experiments conducted on real Twitter datasets detail the proposed DIEET models’ ability to greatly improve the tracking of the state of user interest alongside the popularity of event propagation, and DIEET also has superior prediction performance compared to state-of-the-art models in terms of identifying user dynamic interest. 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引用次数: 0
摘要
移动互联网的快速发展使在线社交网络日益成为我们日常生活中不可或缺的一部分,这为人类行为研究提供了新的视角。现有方法无法根据影响力传播者之前的传播行为有效监测用户兴趣的实时演变,也无法预测用户未来的传播行为。为了应对这些挑战,本研究提出了一种基于知识注入深度学习的事件追踪模型,命名为 DIEET(Diffusion and Interest Evolution behavior modeling for Event Tracking)。该模型通过同时考虑传播和兴趣演化行为,准确预测事件追踪中的传播和兴趣演化行为。具体来说,DIEET 模型综合考虑了传播间隔时间、传播次数、序列间隔时间以及用户对兴趣事件的偏好,大大提高了事件演化预测的准确性和效率。在真实 Twitter 数据集上进行的实验详细说明了所提出的 DIEET 模型能够在事件传播流行度的同时极大地提高对用户兴趣状态的跟踪能力,而且与最先进的模型相比,DIEET 在识别用户动态兴趣方面也具有更优越的预测性能。因此,上述模型在预测和跟踪在线社交网络中用户兴趣和事件传播行为的演变方面具有很大的潜力。
DIEET: Knowledge–Infused Event Tracking in Social Media based on Deep Learning
The rapid expansion of the mobile Internet has led to online social networks becoming an increasingly integral part of our daily lives, this offers a new perspective in the study of human behavior. Existing methods can not effectively monitor the real-time evolution of user interests based on the previous diffusion behavior of influence disseminators and to anticipate future diffusion behavior of users. In order to address these challenges, this study proposes a knowledge-infused deep learning-based event tracking model named DIEET (Diffusion and Interest Evolution behavior modeling for Event Tracking). This model accurately predicts the propagation and interest evolution behavior in event tracking by considering both propagation and interest evolution behavior. Specifically, the DIEET model incorporates the interval time, the number of times, the sequence interval time, and finally user preference for the event of interest, greatly improving the accuracy and efficiency of event evolution prediction. The experiments conducted on real Twitter datasets detail the proposed DIEET models’ ability to greatly improve the tracking of the state of user interest alongside the popularity of event propagation, and DIEET also has superior prediction performance compared to state-of-the-art models in terms of identifying user dynamic interest. Therefore, the aforementioned model offers promising potential in the ability for predicting and tracking the evolution of user interest and event propagation behavior on online social networks.
期刊介绍:
The aim of the Peer-to-Peer Networking and Applications journal is to disseminate state-of-the-art research and development results in this rapidly growing research area, to facilitate the deployment of P2P networking and applications, and to bring together the academic and industry communities, with the goal of fostering interaction to promote further research interests and activities, thus enabling new P2P applications and services. The journal not only addresses research topics related to networking and communications theory, but also considers the standardization, economic, and engineering aspects of P2P technologies, and their impacts on software engineering, computer engineering, networked communication, and security.
The journal serves as a forum for tackling the technical problems arising from both file sharing and media streaming applications. It also includes state-of-the-art technologies in the P2P security domain.
Peer-to-Peer Networking and Applications publishes regular papers, tutorials and review papers, case studies, and correspondence from the research, development, and standardization communities. Papers addressing system, application, and service issues are encouraged.