基于文档主题模型的Twitter帖子社交情绪提取

Masahiro Ohmura, K. Kakusho, T. Okadome
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引用次数: 7

摘要

这里提出的方法从收集的tweet中分析社会情绪,这些tweet至少有800个感性或情感形容词中的1个。该方法通过处理半天内发布的推文作为输入文档,使用潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)提取社会情感,其中一些与我们的日常情感相吻合。然而,提取的情绪表明对时间变化的敏感度较低,这表明它们不适合预测日常的社会或经济事件。在保留词频的情况下,对800个形容词中的每一个所对应的72个有代表性的形容词使用LDA,使我们能够获得对时间变化更敏感的社会情绪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Mood Extraction from Twitter Posts with Document Topic Model
The method proposed here analyzes the social sentiments from collected tweets that have at least 1 of 800 sentimental or emotional adjectives. By dealing with tweets posted in a half a day as an input document, the method uses Latent Dirichlet Allocation (LDA) to extract social sentiments, some of which coincide with our daily sentiments. The extracted sentiments, however, indicate lowered sensitivity to changes in time, which suggests that they are not suitable for predicting daily social or economic events. Using LDA for the representative 72 adjectives to which each of the 800 adjectives maps while preserving word frequencies permits us to obtain social sentiments that show improved sensitivity to changes in time.
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