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Priors for Diversity and Novelty on Neural Recommender Systems

机译:神经推荐系统多样性和新奇的前沿

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PRIN is a neural based recommendation method that allows the incorporation of item prior information into the recommendation process. In this work we study how the system behaves in terms of novelty and diversity under different configurations of item prior probability estimations. Our results show the versatility of the framework and how its behavior can be adapted to the desired properties, whether accuracy is preferred or diversity and novelty are the desired properties, or how a balance can be achieved with the proper selection of prior estimations.
机译:prin是一种神经基于基于的推荐方法,允许将项目的内容纳入推荐过程中。在这项工作中,我们研究系统在项目前几个概率估计的不同配置中的新颖性和多样性方面的行为。我们的结果表明框架的多功能性以及其行为如何适应所需的性质,无论是优选的还是多样性,以及新颖性是所需的性质,或者如何通过正确选择的先前估计来实现平衡。

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