论文标题

使用情感和立场检测来分析新闻推荐系统的偏见

Towards Analyzing the Bias of News Recommender Systems Using Sentiment and Stance Detection

论文作者

Alam, Mehwish, Iana, Andreea, Grote, Alexander, Ludwig, Katharina, Müller, Philipp, Paulheim, Heiko

论文摘要

在线新闻提供商使用新闻推荐系统来减轻信息过载并向用户提供个性化内容。但是,已经假设算法新闻策展以创建过滤气泡并加强用户的选择性曝光,从而增加了他们对两极分化观点和虚假新闻的脆弱性。在本文中,我们展示了如何利用有关新闻项目的立场和情感的信息来分析和量化推荐系统遭受偏见的程度。为此,我们使用立场检测和情感分析给了关于移民主题的德国新闻语料库。在对四个不同推荐系统的实验评估中,我们的结果表明,所有四个模型都略有趋势,以推荐对难民和迁移主题的负面情感和立场的文章。此外,我们观察到基于文本的推荐人的情感和立场偏见与既定用户偏见之间存在正相关,这表明这些系统会扩大用户的意见并降低推荐新闻的多样性。知识吸引的模型似乎最不容易发生这种偏见,而预测精度为代价。

News recommender systems are used by online news providers to alleviate information overload and to provide personalized content to users. However, algorithmic news curation has been hypothesized to create filter bubbles and to intensify users' selective exposure, potentially increasing their vulnerability to polarized opinions and fake news. In this paper, we show how information on news items' stance and sentiment can be utilized to analyze and quantify the extent to which recommender systems suffer from biases. To that end, we have annotated a German news corpus on the topic of migration using stance detection and sentiment analysis. In an experimental evaluation with four different recommender systems, our results show a slight tendency of all four models for recommending articles with negative sentiments and stances against the topic of refugees and migration. Moreover, we observed a positive correlation between the sentiment and stance bias of the text-based recommenders and the preexisting user bias, which indicates that these systems amplify users' opinions and decrease the diversity of recommended news. The knowledge-aware model appears to be the least prone to such biases, at the cost of predictive accuracy.

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