流行物品或利基物品:使用余弦模式的灵活推荐

Yaqiong Wang, Junjie Wu, Zhiang Wu, Hua Yuan, Xu Zhang
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引用次数: 6

摘要

近年来,推荐系统在各种令人兴奋的应用领域(如电子商务、社交网络和基于位置的服务)中呈爆炸式增长。为了提高推荐的准确性,人们已经提出了很多算法,但直到最近,由于小众商品推荐不足而引起的长尾问题才被认为是对推荐系统的真正挑战。对于通常有大量利基商品出售的超大型在线零售商来说尤其如此。鉴于此,在本文中,我们提出了一种基于模式的方法,称为CORE,用于灵活推荐流行和小众产品。与现有的各种推荐器相比,CORE有两个显著的特点。首先,它采用余弦模式而不是频繁模式进行推荐,优于以前基于模式的方法。这有助于过滤掉对推荐有害的虚假交叉支持模式。其次,与一些基准方法(如SVD和LDA)相比,在特别重尾数据集的情况下,CORE在利基商品推荐方面表现良好。事实上,支持和余弦测量的耦合配置使CORE可以在推荐流行和小众产品之间自由切换。在两个基准数据集上的实验结果证明了CORE算法在长尾推荐中的有效性。据我们所知,CORE是最早为灵活推荐头部和尾部项目而设计的推荐器之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Popular Items or Niche Items: Flexible Recommendation Using Cosine Patterns
Recent years have witnessed the explosive growth of recommender systems in various exciting application domains such as electronic commerce, social networking, and location-based services. A great many algorithms have been proposed to improve the accuracy of recommendation, but until recently the long tail problem rising from inadequate recommendation of niche items is recognized as a real challenge to a recommender. This is particularly true for ultra-massive online retailers who usually have tremendous niche goods for sale. In light of this, in this paper, we propose a pattern-based method called CORE for flexible recommendation of both popular and niche items. CORE has two notable features compared with various existing recommenders. First, it is superior to previous pattern-based methods by adopting cosine rather than frequent patterns for recommendation. This helps filter out spurious cross-support patterns harmful to recommendation. Second, compared with some benchmark methods such as SVD and LDA, CORE does well in niche item recommendation given particularly heavy tailed data sets. Indeed, the coupled configuration of the support and cosine measures enables CORE to switch freely between recommending popular and niche items. Experimental results on two benchmark data sets demonstrate the effectiveness of CORE especially in long tail recommendation. To our best knowledge, CORE is among the earliest recommenders designed purposefully for flexible recommendation of both head and tail items.
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