论文标题
Profairrec:提供者公平意识新闻推荐
ProFairRec: Provider Fairness-aware News Recommendation
论文作者
论文摘要
新闻推荐旨在帮助在线新闻平台用户找到他们喜欢的新闻文章。现有的新闻推荐方法通常从新闻中的历史用户行为中学习模型。但是,这些行为通常对新闻提供者有偏见。对偏见用户数据培训的模型可能会捕获甚至扩大新闻提供商的偏见,并且对于某些少数新闻提供者而言是不公平的。在本文中,我们提出了一个提供商公平感知到的新闻推荐框架(名为Prifairrec),该框架可以从偏见的用户数据中学习新闻推荐模型公平的新闻提供商。 ProfairRec的核心思想是学习提供商 - 费用新闻表示和提供商 - 费用用户表示,以实现提供商的公平性。为了从有偏见的数据中学习提供商 - 费用表示,我们采用提供商偏见的表示来从数据中继承提供商偏见。提供者 - 费用和偏见的新闻表示形式分别从新闻内容和提供商ID中获取,这些新闻说明是基于用户点击历史记录而进一步汇总的,以构建公平且有偏见的用户表示。所有这些表示都用于模型培训,而仅将公平表示形式用于匹配用户新闻以实现公平的新闻建议。此外,我们提出了一项关于新闻提供者歧视的对抗性学习任务,以防止提供商 - 费用新闻代表制度编码提供商偏见。我们还提出了关于提供商 - 福尔和偏见表示的正交正规化,以更好地减少提供商 - 费用表示提供者的偏见。此外,ProfairRec是一个通用框架,可以应用于不同的新闻推荐方法。在公共数据集上进行的广泛实验证明,我们的ProfairRec方法可以有效地改善许多现有方法的提供者的公平性,同时保持其建议准确性。
News recommendation aims to help online news platform users find their preferred news articles. Existing news recommendation methods usually learn models from historical user behaviors on news. However, these behaviors are usually biased on news providers. Models trained on biased user data may capture and even amplify the biases on news providers, and are unfair for some minority news providers. In this paper, we propose a provider fairness-aware news recommendation framework (named ProFairRec), which can learn news recommendation models fair for different news providers from biased user data. The core idea of ProFairRec is to learn provider-fair news representations and provider-fair user representations to achieve provider fairness. To learn provider-fair representations from biased data, we employ provider-biased representations to inherit provider bias from data. Provider-fair and -biased news representations are learned from news content and provider IDs respectively, which are further aggregated to build fair and biased user representations based on user click history. All of these representations are used in model training while only fair representations are used for user-news matching to achieve fair news recommendation. Besides, we propose an adversarial learning task on news provider discrimination to prevent provider-fair news representation from encoding provider bias. We also propose an orthogonal regularization on provider-fair and -biased representations to better reduce provider bias in provider-fair representations. Moreover, ProFairRec is a general framework and can be applied to different news recommendation methods. Extensive experiments on a public dataset verify that our ProFairRec approach can effectively improve the provider fairness of many existing methods and meanwhile maintain their recommendation accuracy.