首页> 外文会议>International Conference on Information Systems >Emergence of Things Felt: Harnessing the Semantic Space of Facebook Feeling Tags Completed Research Paper
【24h】

Emergence of Things Felt: Harnessing the Semantic Space of Facebook Feeling Tags Completed Research Paper

机译:事情的出现觉得:利用Facebook的语义空间感觉标签完成了研究论文

获取原文

摘要

In 2013 Facebook launched a feature allowing users to add a feeling tag to their posts as part of their daily interactions online. Our research leverages the text accompanying all such volunteered feeling tags in an effort to map the semantic space of 'Facebook feelings' as they are catalogued by the crowd. By letting the data speak for itself, a folksonomy of feelings reveal temporal and social patterns in the most commonly shared feelings. Unlike many such studies, however, we do not only focus on examining the patterns emerging from big data, but also put the expressed feelings to work using machine learning towards both the classification and detection of emotions. This paper first demonstrates that feelings expressed online self-organize along the same lines (valence and arousal dimensions) experts in psychology and emotions have organized them for decades. As we enter the debate of classifying human emotions, our analysis directly contrasts Facebook's manifestation of feelings with prior theoretical proposals to detect both similarities and differences from past assumptions. In line with the 'exhibitional'nature of Facebook, we illustrate that 'extreme'feelings, such as excitement and anger, are expressed in even more extreme levels of both valence and arousal. Beyond contrasting the folksonomy of feelings with dimensional mappings of emotions proposed by past research, we further utilize artificial intelligence techniques towards building a test version of an automatic 'Feelings Meter' able to detect feelings from text.
机译:2013年Facebook推出了一个功能,允许用户将感觉标签添加到他们的帖子中作为他们日常交互的一部分。我们的研究利用了所有此类志愿感受的文本,以努力绘制“Facebook感情”的语义空间,因为它们被人群编目。通过让数据本身说话,感情的一种情有语,揭示了最常见的感受中的时间和社会模式。然而,与许多这样的研究不同,我们不仅专注于检查从大数据中出现的模式,还要利用所表达的感受,使用机器学习朝着情感的分类和检测。本文首先展示了在线表达在线的感受沿着相同的线(价和唤起维度)心理学和情感专家已经组织了几十年。正如我们进入对人类情绪分类的辩论一样,我们的分析与Facebook的表现与先前的理论建议进行了造影,以检测与过去假设的相似之处和差异。符合Facebook的“展览会”,我们说明了“兴奋和愤怒等极端的诸如令人兴奋和愤怒”。除了对过去研究提出的情绪的尺寸映射的情绪对比的情感上,我们进一步利用人工智能技术来构建一个能够从文本中检测到感受的自动“感受表”的测试版本。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号