Profiling vs. time vs. content: What does matter for top-k publication recommendation based on Twitter profiles?

Chifumi Nishioka, A. Scherp
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引用次数: 30

Abstract

So far it is unclear how different factors of a scientific publication recommender system based on users' tweets have an influence on the recommendation performance. We examine three different factors, namely profiling method, temporal decay, and richness of content. Regarding profiling, we compare CF-IDF that replaces terms in TF-IDF by semantic concepts, HCF-IDF as novel hierarchical variant of CF-IDF, and topic modeling. As temporal decay functions, we apply sliding window and exponential decay. In terms of the richness of content, we compare recommendations using both full-texts and titles of publications and using only titles. Overall, the three factors make twelve recommendation strategies. We have conducted an online experiment with 123 participants and compared the strategies in a within-group design. The best recommendations are achieved by the strategy combining CF-IDF, sliding window, and with full-texts. However, the strategies using the novel HCF-IDF profiling method achieve similar results with just using the titles of the publications. Therefore, HCF-IDF can make recommendations when only short and sparse data is available.
简介vs时间vs内容:基于Twitter简介的top-k出版物推荐中,什么重要?
目前还不清楚基于用户推文的科学出版物推荐系统的不同因素对推荐性能的影响。我们研究了三个不同的因素,即分析方法,时间衰减和内容的丰富性。在分析方面,我们比较了用语义概念替换TF-IDF中的术语的CF-IDF、作为CF-IDF的新型分层变体的HCF-IDF和主题建模。我们采用滑动窗口和指数衰减作为时间衰减函数。在内容的丰富性方面,我们比较了使用全文和出版物标题和仅使用标题的推荐。综上所述,这三个因素构成了12种推荐策略。我们对123名参与者进行了在线实验,并在组内设计中比较了这些策略。最好的建议是通过结合CF-IDF、滑动窗口和全文的策略来实现的。然而,使用新的HCF-IDF分析方法的策略在仅使用出版物标题的情况下获得了类似的结果。因此,HCF-IDF可以在只有短而稀疏的数据时提出建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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