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Cold Start Revisited: A Deep Hybrid Recommender with Cold-Warm Item Harmonization

机译:冷启动重新审视:深度混合推荐,具有冷热物品协调

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Collaborative filtering-based recommender systems are known to suffer from the item cold-start problem. Most recent attempts to mitigate this problem presented parametric approaches, such as deep content based models. In this paper, we show that a straightforward application of parametric models may lead to discrepancies between the cold and warm items’ distributions in the CF space. As a remedy, we propose to combine parametric with non-parametric estimation for robust cold item placement. Extensive evaluation indicates that our method is competitive with other baselines, while producing cold items placement that better resembles the distribution of warm items in the collaborative filtering space.
机译:已知基于协作的滤波的推荐系统受到物品冷启动问题。 最新尝试提高此问题的参数方法,例如基于深度内容的模型。 在本文中,我们表明参数模型的直接应用可能导致CF空间中的冷和温暖物品的分布之间的差异。 作为一个补救措施,我们建议将参数组合,并为强大的冷物品放置而具有非参数估计。 广泛的评估表明我们的方法与其他基线具有竞争力,同时产生冷物品放置,以便更好地类似于协同过滤空间中的温暖物品的分布。

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