Literature recommendation systems (LRS) assist readers in the discovery of relevant content from the overwhelming amount of literature available. Despite the widespread adoption of LRS, there is a lack of research on the user-perceived recommendation characteristics for fundamentally different approaches to content-based literature recommendation. To complement existing quantitative studies on literature recommendation, we present qualitative study results that report on users' perceptions for two contrasting recommendation classes: (1) link-based recommendation represented by the Co-Citation Proximity (CPA) approach, and (2) text-based recommendation represented by Lucene's MoreLikeThis (MLT) algorithm. The empirical data analyzed in our study with twenty users and a diverse set of 40 Wikipedia articles indicate a noticeable difference between text- and link-based recommendation generation approaches along several key dimensions. The text-based MLT method receives higher satisfaction ratings in terms of user-perceived similarity of recommended articles. In contrast, the CPA approach receives higher satisfaction scores in terms of diversity and serendipity of recommendations. We conclude that users of literature recommendation systems can benefit most from hybrid approaches that combine both link- and text-based approaches, where the user's information needs and preferences should control the weighting for the approaches used. The optimal weighting of multiple approaches used in a hybrid recommendation system is highly dependent on a user's shifting needs.
翻译:尽管广泛采用LRS,但我们在研究中与20个用户和40个维基百科文章分析的经验性数据表明,基于文本和链接的建议生成方法在几个关键方面存在明显差异。基于文本的MLT方法在推荐条款的用户与用户的相似性方面得到更高的满意度。相比之下,CPA方法在建议的多样性和精度方面得到更高的满意度。我们的结论是,文献建议系统的用户可以从将基于链接和文本的方法结合起来的混合方法中受益最大,在用户使用高度加权法时,用户使用高度加权法。