Off-line vs. On-line Evaluation of Recommender Systems in Small E-commerce

Ladislav Peška, P. Vojtás
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引用次数: 19

Abstract

In this paper, we present our work towards comparing on-line and off-line evaluation metrics in the context of small e-commerce recommender systems. Recommending on small e-commerce enterprises is rather challenging due to the lower volume of interactions and low user loyalty, rarely extending beyond a single session. On the other hand, we usually have to deal with lower volumes of objects, which are easier to discover by users through various browsing/searching GUIs. The main goal of this paper is to determine applicability of off-line evaluation metrics in learning true usability of recommender systems (evaluated on-line in A/B testing). In total 800 variants of recommenders were evaluated off-line w.r.t. 18 metrics covering rating-based, ranking-based, novelty and diversity evaluation. The off-line results were afterwards compared with on-line evaluation of 12 selected recommender variants and based on the results, we tried to learn and utilize an off-line to on-line results prediction model. Off-line results shown a great variance in performance w.r.t. different metrics with the Pareto front covering 64% of the approaches. Furthermore, we observed that on-line results are considerably affected by the seniority of users. On-line metrics correlates positively with ranking-based metrics (AUC, MRR, nDCG) for novice users, while too high values of novelty had a negative impact on the on-line results for them.
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小型电子商务中推荐系统的离线与在线评价
在本文中,我们介绍了我们在小型电子商务推荐系统中比较在线和离线评估指标的工作。在小型电子商务企业推荐是相当具有挑战性的,因为互动量较小,用户忠诚度较低,很少超过一次会话。另一方面,我们通常必须处理较少量的对象,这些对象更容易被用户通过各种浏览/搜索gui发现。本文的主要目标是确定离线评估指标在学习推荐系统的真正可用性(在A/B测试中在线评估)中的适用性。总共有800个不同的推荐器被离线评估,包括基于评级、基于排名、新颖性和多样性评估的18个指标。然后将离线结果与12个选定的推荐变量的在线评估进行比较,并在此基础上尝试学习和利用离线到在线的结果预测模型。离线结果显示,不同指标的性能差异很大,Pareto前沿覆盖了64%的方法。此外,我们观察到在线结果受到用户年资的显著影响。对于新手用户,在线指标与基于排名的指标(AUC、MRR、nDCG)呈正相关,而新颖性值过高则对他们的在线结果有负面影响。
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