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Stacking recommendation engines with additional meta-features

机译:堆叠推荐引擎与其他元特征

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In this paper, we apply stacking, an ensemble learning method, to the problem of building hybrid recommendation systems. We also introduce the novel idea of using runtime metrics which represent properties of the input users/items as additional meta-features, allowing us to combine component recommendation engines at runtime based on user/item characteristics. In our system, component engines are level-1 predictors, and a level-2 predictor is learned to generate the final prediction of the hybrid system. The input features of the level-2 predictor are predictions from component engines and the runtime metrics. Experimental results show that our system outperforms each single component engine as well as a static hybrid system. Our method has the additional advantage of removing restrictions on component engines that can be employed; any engine applicable to the target recommendation task can be easily plugged into the system.
机译:在本文中,我们应用堆叠,一个集合学习方法,对构建混合推荐系统的问题。我们还介绍了使用运行时指标的新颖思想,它表示输入用户/项目的属性作为额外的元特征,允许我们根据用户/项目特征将组件推荐引擎组合在运行时。在我们的系统中,组件引擎是Level-1预测器,并且学习了一个级别的预测器以产生混合系统的最终预测。 Level-2预测器的输入特征是来自组件发动机和运行时度量的预测。实验结果表明,我们的系统优于每个单个组件发动机以及静态混合系统。我们的方法具有去除可以采用的组件发动机的限制的额外优点;任何适用于目标推荐任务的发动机都可以轻松插入系统。

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