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Resolution of grammatical tense into actual time and its application in Time Perspective study in the tweet space

机译:语法时态分解为实际时间的方法及其在推文空间时间透视研究中的应用

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摘要

Time Perspective (TP) is an important area of research within the ‘psychological time’ paradigm. TP, or the manner in which individuals conduct themselves as a reflection of their cogitation of the past, the present, and the future, is considered as a basic facet of human functioning. These perceptions of time have an influence on our actions, perceptions, and emotions. Assessment of TP based on human language on Twitter opens up a new avenue for research on subjective view of time at a large scale. In order to assess TP of users’ from their tweets, the foremost task is to resolve grammatical tense into the underlying temporal orientation of tweets as for many tweets the tense information, and their temporal orientations are not the same. In this article, we first resolve grammatical tense of users’ tweets to identify their underlying temporal orientation: past, present, or future. We develop a minimally supervised classification framework for temporal orientation task that enables incorporating linguistic knowledge into a deep neural network. The temporal orientation model achieves an accuracy of 78.7% when tested on a manually annotated test set. This method performs better when compared to the state-of-the-art technique. Secondly, we apply the classification model to classify the users’ tweets in either of the past, present or future categories. Tweets classified this way are then grouped for each user which gives rise to unidimensional TP. The valence (positive, negative, and neutral) is added to the temporal orientation dimension to produce the bidimensional TP. We finally investigate the association between the Twitter users’ unidimensional and bidimensional TP and their age, education and six basic emotions in a large-scale empirical manner. Our analysis shows that people tend to think more about the past as well as more positive about the future when they age. We also observe that future-negative people are less joyful, more sad, more disgusted, and more angry while past-negative people have more fear.
机译:时间透视(TP)是“心理时间”范式中重要的研究领域。 TP,或个人以反映过去,现在和未来的方式来表现自己的方式,被认为是人类功能的基本方面。这些对时间的感知会影响我们的行为,感知和情感。在Twitter上基于人类语言的TP评估为大规模的时间主观研究开辟了一条新途径。为了从用户的推文中评估用户的TP,首要任务是将语法时态解析为推文的基本时间方向,就像许多推文中的时态信息一样,它们的时间方向也不相同。在本文中,我们首先解析用户推文的语法时态,以识别其潜在的时间取向:过去,现在或将来。我们为时间定向任务开发了一个最小监督的分类框架,该框架可将语言知识整合到一个深度神经网络中。当在手动注释的测试集上进行测试时,时间方向模型的准确性达到78.7%。与最新技术相比,该方法的性能更好。其次,我们使用分类模型将用户的推文分类为过去,现在或将来的类别。然后将按这种方式分类的推文针对每个用户进行分组,从而产生一维TP。将化合价(正价,负价和中性价)添加到时间方向维度以生成二维TP。我们最终将以大规模的经验方式研究Twitter用户的一维和二维TP与他们的年龄,教育程度和六种基本情绪之间的关联。我们的分析表明,随着年龄的增长,人们倾向于对过去的思考和对未来的乐观。我们还观察到,未来消极的人不那么快乐,更难过,更恶心,更生气,而过去消极的人更害怕。

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