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Autoencoder-based personalized ranking framework unifying explicit and implicit feedback for accurate top-N recommendation

机译:基于自动编码器的个性化排名框架,统一了显式和隐式反馈,以实现准确的前N个推荐

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摘要

Existing top-N recommendation models can be classified according to the following two criteria: way of optimization and type of data. In terms of optimization, the models can either minimize the mean squared error (MSE) of rating predictions, which is so-called pointwise learning, or maximize the likelihood of pairwise preferences over more preferred and less preferred items (e.g., rated and unrated items), which is so-called pairwise learning. According to the data type, the models use either explicit feedback or implicit feedback. Most existing models use one of the optimization methods with either explicit or implicit feedback. However, we believe that pairwise learning and pointwise learning (resp. using explicit and implicit feedback) are complementary, thus employing both optimization methods and both forms of data together would bring a synergy effect in recommendation. Along this line, we propose a novel, unified recommendation framework based on deep neural networks, in which the pointwise and pairwise learning are employed together while using both the users' explicit and implicit feedback. The experimental results on four real-life datasets confirm the effectiveness of our proposed framework over the state-of-the-art ones. (C) 2019 Elsevier B.V. All rights reserved.
机译:现有的top-N推荐模型可以根据以下两个标准进行分类:优化方式和数据类型。在优化方面,模型可以使评级预测的均方误差(MSE)最小化(所谓的逐点学习),也可以使成对偏好的项目更偏爱和偏爱的项(例如,评级和未评级的项目)最大化),即所谓的成对学习。根据数据类型,模型使用显式反馈或隐式反馈。大多数现有模型都使用具有显式或隐式反馈的优化方法之一。但是,我们认为逐对学习和逐点学习(分别使用显式和隐式反馈)是互补的,因此同时使用两种优化方法和两种数据形式将在推荐中产生协同效应。沿着这条线,我们提出了一个基于深度神经网络的新颖,统一的推荐框架,该框架将点对和成对学习一起使用,同时使用了用户的显式和隐式反馈。在四个真实数据集上的实验结果证实了我们提出的框架优于最新框架的有效性。 (C)2019 Elsevier B.V.保留所有权利。

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