微博讨论进程偏见可视化意识提升

Yasuyuki Hatoh, K. Takeuchi, Kiyota Hashimoto
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引用次数: 1

摘要

像Twitter这样的微博向用户展示他们自己选择关注的其他帖子,以及其他人转发的相关帖子。这就产生了一个问题,即他们只看到他们认为有利的东西,尽管有各种各样的观点。为了培养更好的信息素养,应该提出这种偏见,以提高对他们所看到和阅读的东西以及他们自己的偏见的认识。本研究提出了一种新的方法来检测Twitter上给定主题讨论的偏见进展,而不需要准备一组关键字或字典,并将讨论进展的模式可视化。我们采用主成分分析方法来捕捉偏误的模式,并与人类判断的对比实验表明,我们的方法能够有效地捕捉到真实的偏误。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Awareness promoting visualization of biasedness of discussion progress of microblogs
Microblogs like Twitter presents users with the others postings they choose to follow by themselves and related postings that are re-posted by the others. It raises a problem that they see only what they think favorable, although there is a wide variation of opinions. To cultivate a better information literacy, such biases should be presented to promote awareness on the biasedness not only of what they see and read but also of themselves. This study proposes a new method to detect the biased progress of discussion on a given topic on Twitter without a prepared set of keywords or dictionaries, and to visualize the pattern of the discussion progress. We employ the principal component analysis to capture the pattern of biasedness, and our contrastive experiment with human judgment shows that our method captures the real biasedness effectively.
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