Emotion Detection in Online Social Network- A Multilabel Learning Process

T. Rajkumar, Palagiri Yallareddy, Ediga Yoganand, Damera Rajkumar, Gundlapalli Likith
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Abstract

Online social networks (OSNs)that provide emotion detection might benefit from a variety of programmers, such as specialized commercial services, guidance systems, etc. Many published materials in OSNs offer a great chance to investigate users' emotions, making it easier to design programmers quickly that are responsive to theirusers' emotions. According to the people's present emotions, personalized recommendation systemcan make recommendations for specific goods, movies, or songs. With an annotated Twitter dataset, this research creates connections between emotion labels, social relationships, and chronological events. In this research work we use an emotion factor graph identification model to integrate social relationships, sequential correlations and sentiment label connections are combined into a common framework, and we identify a few completely multi-label learning-based emotions methodology in OSN s. Experimental tests based on a dataset with human annotations are conducted, and the findings demonstrate that the suggestedmethodology can outperform the most recent techniques.
在线社交网络中的情感检测——一个多标签学习过程
提供情感检测的在线社交网络(osn)可能会受益于各种各样的程序,比如专门的商业服务、引导系统等。许多在osn中发布的材料提供了一个很好的机会来调查用户的情绪,这使得更容易快速地设计出响应用户情绪的程序员。个性化推荐系统可以根据人们当下的情绪,对特定的商品、电影或歌曲进行推荐。通过一个带注释的Twitter数据集,本研究创建了情感标签、社会关系和时间顺序事件之间的联系。在这项研究中,我们使用情感因素图识别模型将社会关系、顺序关联和情感标签连接结合到一个共同的框架中,并在OSN中识别出几种完全基于多标签学习的情感方法。基于人工注释的数据集进行了实验测试,结果表明所建议的方法优于最新的技术。
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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