语境中的可信度:Twitter特征分布分析

J. O'Donovan, Byungkyu Kang, Greg Meyer, Tobias Höllerer, Sibel Adali
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引用次数: 112

摘要

Twitter是实时快速传播用户提供内容的主要论坛。因此,它所包含的大部分信息与许多用户并不是特别相关,实际上被许多人视为不必要的“噪音”。使用各种模型和方法来预测推文是否相关、有新闻价值或可信,这方面的研究兴趣越来越大。在本文中,我们重点分析了Twitter中单个功能(如哈希标签、转发和提及)在预测可信度方面的效用。我们首先描述了一组用于预测微博tweets语料库上人工提供的可信度评估的功能的基于上下文的效用评估。接下来是评估每个特征在8个不同的tweet数据抓取中的分布/存在。最后,分析了不同长度的二元推文对和转发链的特征分布。我们的研究结果表明,可信度的最佳指标包括url、提及、转发和推文长度,而这些特征在描述紧急情况和动荡局势的数据中更为突出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credibility in Context: An Analysis of Feature Distributions in Twitter
Twitter is a major forum for rapid dissemination of user-provided content in real time. As such, a large proportion of the information it contains is not particularly relevant to many users and in fact is perceived as unwanted 'noise' by many. There has been increased research interest in predicting whether tweets are relevant, newsworthy or credible, using a variety of models and methods. In this paper, we focus on an analysis that highlights the utility of the individual features in Twitter such as hash tags, retweets and mentions for predicting credibility. We first describe a context-based evaluation of the utility of a set of features for predicting manually provided credibility assessments on a corpus of microblog tweets. This is followed by an evaluation of the distribution/presence of each feature across 8 diverse crawls of tweet data. Last, an analysis of feature distribution across dyadic pairs of tweets and retweet chains of various lengths is described. Our results show that the best indicators of credibility include URLs, mentions, retweets and tweet length and that features occur more prominently in data describing emergency and unrest situations.
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