时间演化系统中基于协同过滤的推荐的实证分析

Xiaoyu Shi, Xin Luo, Mingsheng Shang, Xin-Yi Cai
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引用次数: 4

摘要

推荐系统每时每刻都在造福人们的日常生活。虽然在一步推荐和静态用户-项目网络中的性能已经引起了相当大的关注,但推荐人在时间进化网络中的性能仍然不清楚。为了解决这一问题,本文首先采用二部网络来描述在线商业系统。然后,我们提出了一种网络进化方法来模拟推荐系统与用户决策在随时间进化的网络中的相互反馈。为了研究三种最先进的基于cf的推荐器的长期性能,即基于用户的协同过滤(UCF),基于项目的协同过滤(ICF)和基于潜在因素的模型(LFM),该在线网络是由每个被测试的推荐者随时间驱动的。除了使用均方根误差(RMSE)来评估推荐的预测准确性外,我们还计算了内部相似度和流行度来研究推荐的性能,以及基尼系数来评估在线网络的健康状况。在两个真实数据集上的实验发现,在时间演化过程中,LFM的精度损失小于UCF和ICF,并且LFM在一步推荐中具有较高的精度。此外,尽管LFM在网络时间演化过程中被证明具有较高的准确性和稳定性,但ICF在推荐多样性方面表现出比LFM更好的性能,同时有利于在线系统的健康运行。因此,这些结果为下一代推荐系统的设计提供了见解,该系统将在短期和长期性能之间进行权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical analysis of collaborative filtering-based recommenders in temporally evolving systems
Recommender systems benefit people's daily lives at every moment. While considerable attentions have been drawn by performance in one-step recommendation and static user-item network, recommenders' performance on temporally evolving networks remains unclear. To address this issue, this paper firstly adopts a bipartite network to describe the online commercial system. We then propose a network evolution method to simulate the mutual feedback between recommender system and its users' decisions in the evolving network with time. To investigate the long-term performance of three state-of-the-art CF-based recommenders, i.e., the user-based collaborative filtering (UCF), item-based collaborative filtering (ICF) and latent factor-based model (LFM), this online network is evolving with time driven by each tested recommender. Besides using root mean squared error (RMSE) to evaluate prediction accuracy of recommender, we also calculate the intra-similarity and popularity to study the performance of recommendation, as well as Gini coefficient to evaluate the health of online network. Experiments on two real datasets, we find that during the temporal evolving process LFM's accuracy loss is less than that of UCF and ICF, besides LFM enjoys a high accuracy in one-step recommendation. Moreover, although LFM proves to be highly accurate and stable during the temporal evolving network, ICF shows a better performance than LFM in terms of recommendation diversity, and it simultaneously benefits the health of online system. Hence, these results provide insights for the design of a next generation of recommender systems, which would tradeoffs between short- and long-term performances.
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