Improving Collaborative Filtering Using a Cognitive Model of Human Category Learning

J. Web Sci. Pub Date : 2017-01-24 DOI:10.1561/106.00000007
Simone Kopeinik, Dominik Kowald, Ilire Hasani-Mavriqi, E. Lex
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引用次数: 12

Abstract

Classic resource recommenders like Collaborative Filtering treat users as being just another entity, thereby neglecting non-linear user-resource dynamics that shape attention and interpretation. SUSTAIN, as an unsupervised human category learning model, captures these dynamics. It aims to mimic a learner’s behavior of categorization. In this paper, we use three social bookmarking datasets gathered from BibSonomy, CiteULike and Delicious to investigate SUSTAIN as a user modeling approach to re-rank and enrich Collaborative Filtering following a hybrid recommender strategy. Evaluations against baseline algorithms in terms of recommender accuracy and computational complexity reveal encouraging results. Our approach substantially improves Collaborative Filtering and, depending on the dataset, successfully competes with a computationally much more expensive Matrix Factorization variant. In a further step, we explore SUSTAIN’s dynamics in our specific learning task and show that both, memorization of a user’s history and clus- tering, contribute to the algorithm’s performance. Finally, we observe that the users’ attentional foci determined by SUSTAIN correlate with the users’ level of curiosity, identified by the SPEAR algorithm. Overall, the results of our study show that SUSTAIN can be used to efficiently model attention-interpretation dynamics of users and can help to improve Collaborative Filtering in resource recommendation tasks.
利用人类类别学习的认知模型改进协同过滤
像协同过滤这样的经典资源推荐将用户视为另一个实体,从而忽略了影响注意力和解释的非线性用户资源动态。SUSTAIN作为一个无监督的人类类别学习模型,捕捉到了这些动态。它旨在模仿学习者的分类行为。在本文中,我们使用从BibSonomy、CiteULike和Delicious收集的三个社交书签数据集来研究SUSTAIN作为一种用户建模方法,在混合推荐策略下重新排名和丰富协同过滤。在推荐精度和计算复杂度方面,对基线算法的评估显示出令人鼓舞的结果。我们的方法大大改进了协同过滤,并且根据数据集,成功地与计算成本更高的矩阵分解变体竞争。在进一步的步骤中,我们在特定的学习任务中探索了SUSTAIN的动态,并表明用户历史的记忆和聚类都有助于算法的性能。最后,我们观察到,SUSTAIN确定的用户注意力焦点与SPEAR算法识别的用户好奇心水平相关。总体而言,我们的研究结果表明,SUSTAIN可以有效地模拟用户的注意-解释动态,并有助于改进资源推荐任务中的协同过滤。
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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