TransNets:学习转换为推荐

R. Catherine, William W. Cohen
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引用次数: 240

摘要

最近,深度学习方法已经被证明比传统方法可以提高推荐系统的性能,特别是当评论文本可用时。例如,最近的一个模型DeepCoNN使用神经网络学习目标用户写的所有评论文本的一个潜在表示,以及目标项目的所有评论文本的第二个潜在表示,然后将这些潜在表示结合起来,以获得推荐任务的最先进性能。我们表明(不出所料)评论文本的大部分预测价值来自目标用户对目标商品的评论。然后,我们介绍了一种方法,即使在目标用户对目标商品的评论不可用时,也可以将这些信息用于推荐。我们的模型TransNets通过引入一个额外的潜在层来表示目标用户-目标项目对,从而扩展了DeepCoNN模型。然后,我们在训练时将这一层正则化,使其类似于目标用户对目标项目的评论的另一个潜在表示。我们表明TransNets及其扩展比以前的最先进的技术有了实质性的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TransNets: Learning to Transform for Recommendation
Recently, deep learning methods have been shown to improve the performance of recommender systems over traditional methods, especially when review text is available. For example, a recent model, DeepCoNN, uses neural nets to learn one latent representation for the text of all reviews written by a target user, and a second latent representation for the text of all reviews for a target item, and then combines these latent representations to obtain state-of-the-art performance on recommendation tasks. We show that (unsurprisingly) much of the predictive value of review text comes from reviews of the target user for the target item. We then introduce a way in which this information can be used in recommendation, even when the target user's review for the target item is not available. Our model, called TransNets, extends the DeepCoNN model by introducing an additional latent layer representing the target user-target item pair. We then regularize this layer, at training time, to be similar to another latent representation of the target user's review of the target item. We show that TransNets and extensions of it improve substantially over the previous state-of-the-art.
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