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Apr 24, 2019 · In this paper, we study how to recommend both accurate and diverse top-N recommendation, which is a typical instance of the maximum coverage ...
In this paper, we study how to recommend both accurate and diverse top-N recommendation, which is a typical instance of the maximum coverage problem.
In this paper, we study how to recommend both accurate and diverse top-N recommendation, which is a typical instance of the maximum coverage problem.
Apr 1, 2021 · In this study, we propose a novel recommendation framework to optimize the recommendation list for the Top-N task, named Collaborative Filtering ...
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In this study, we propose a novel recommendation framework to optimize the recommendation list for the Top-N task, named Collaborative Filtering-based Deep ...
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In this article we argue that the motivation of diversity research is to increase the probability of retrieving unusual or novel items which are relevant to ...