In a news recommender system, a reader's preferences change over time. Some preferences drift quite abruptly (short-term preferences), while others change over a longer period of time (long-term preferences). Although the existing news recommender systems consider the reader's full history, they often ignore the dynamics in the reader's behavior. Thus, they cannot meet the demand of the news readers for their time-varying preferences. In addition, the state-of-the-art news recommendation models are often focused on providing accurate predictions, which can work well in traditional recommendation scenarios. However, in a news recommender system, diversity is essential, not only to keep news readers engaged, but also to play a key role in a democratic society. In this PhD dissertation, our goal is to build a news recommender system to address these two challenges. Our system should be able to: (i) accommodate the dynamics in reader behavior; and (ii) consider both accuracy and diversity in the design of the recommendation model. Our news recommender system can also work for unprofiled, anonymous and short-term readers, by leveraging the rich side information of the news items and by including the implicit feedback in our model. We evaluate our model with multiple evaluation measures (both accuracy and diversity-oriented metrics) to demonstrate the effectiveness of our methods.
翻译:在一个新闻推荐者系统中,读者的偏好会随着时间的变化而变化。有些偏好会突然移动(短期偏好),而另一些偏好则会在较长的时间内变化(长期偏好 ) 。虽然现有的新闻推荐者系统会考虑读者的全部历史,但它们往往忽视读者行为的动态。因此,它们无法满足读者对时间变化偏好的需求。此外,最先进的新闻推荐模式往往侧重于提供准确的预测,这在传统的推荐方案中可以很好地发挥作用。然而,在一个新闻推荐者系统中,多样性不仅对于让新闻读者参与,而且对于在民主社会中发挥关键作用至关重要。在博士论文中,我们的目标是建立一个新闻推荐者系统来应对这两个挑战。我们的系统应该能够:(一) 适应读者行为的动态;(二) 在设计建议模式时考虑准确性和多样性。我们的新闻推荐者系统还可以为没有描述的、匿名的和短期的读者工作模式,不仅是为了让新闻读者参与,而且是为了在民主社会中扮演关键的角色。在博士论文论文中,我们的目标是建立一个新闻推荐者系统来应对这两个挑战。我们以隐含性的方法来展示我们面向信息的准确性的项目和指数。