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首页> 外文期刊>Information Sciences: An International Journal >(OERS)-E-3: An explainable recommendation system with online learning, online recommendation, and online explanation
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(OERS)-E-3: An explainable recommendation system with online learning, online recommendation, and online explanation

机译:(OERS)-E-3:可解释的推荐系统,具有在线学习,在线推荐和在线解释

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Explainable recommendation systems (ERSs) have attracted increasing attention from researchers, which generate high-quality recommendations with intuitive explanations to help users make appropriate decisions. However, most of the existing ERSs are designed with an offline setting, which can hardly adjust their models using the online feedback instantly for improved performance. To overcome the limitations of ERSs with the offline setting, we propose a novel online setting for ERSs and devise an effective model called (OERS)-E-3 in this online setting, which can perform online learning with good scalability and rigorous theoretical guides for better online recommendations and online explanations. (OERS)-E-3 also addresses two challenging problems in real scenarios, namely, the sparsity and delay of online explanations' feedback as well as the partialness and insufficiency of online recommendations' feedback. Specifically, (OERS)-E-3 not only instantly leverages the knowledge learned from the recommendations' feedback to adjust the sparse and delayed explanations' feedback for better explanations but also utilizes a novel exploitation-expl oration strategy that incorporates the explanations' feedback to adjust the partial and insufficient recommendations' feedback for better recommendations. Our theoretical analysis and empirical studies on one simulated and two real-world datasets show that our model outperforms the state-of-the-art models in online scenarios remarkably. (C) 2021 Elsevier Inc. All rights reserved.
机译:可解释推荐系统(ERSs)已经吸引了越来越多的研究人员的关注,它可以生成高质量的推荐,并提供直观的解释,帮助用户做出适当的决策。然而,大多数现有的ERS设计为离线设置,这很难使用在线反馈即时调整其模型以提高性能。为了克服ERSs在离线环境下的局限性,我们提出了一种新的ERSs在线环境,并在此在线环境下设计了一个名为(OERS)-E-3的有效模型,该模型可以进行在线学习,具有良好的可扩展性和严格的理论指导,以获得更好的在线推荐和在线解释。(OERS)-E-3还解决了现实场景中两个具有挑战性的问题,即在线解释反馈的稀疏性和延迟性,以及在线推荐反馈的片面性和不足性。具体而言,(OERS)-E-3不仅可以立即利用从建议反馈中获得的知识,调整稀疏和延迟的解释反馈,以获得更好的解释,还可以利用一种新的利用解释策略,将解释反馈结合起来,调整部分和不充分的建议反馈,以获得更好的建议。我们对一个模拟数据集和两个真实数据集的理论分析和实证研究表明,我们的模型在在线场景中显著优于最先进的模型。(c)2021爱思唯尔公司保留所有权利。

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