基于会话的内容特征推荐的3D卷积网络

T. Tuan, Tu Minh Phuong
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引用次数: 165

摘要

在许多现实生活中的推荐设置中,用户资料和过去的活动是不可用的。推荐系统应该根据会话数据进行预测,例如会话点击和点击项目的描述。传统的推荐方法依赖于过去的用户-物品交互数据,在这些情况下无法提供准确的结果。在本文中,我们描述了一种结合会话点击和内容特征(如项目描述和项目类别)来生成推荐的方法。为了对这些通常具有不同类型和性质的数据建模,我们使用具有字符级编码的所有输入数据的三维卷积神经网络。虽然3D架构提供了一种自然的方式来捕获时空模式,但字符级网络允许使用原始文本表示来建模不同的数据类型,从而减少特征工程的工作量。我们将该方法应用于预测电子商务网站的添加到购物车事件,这比预测下一次点击要困难得多。在两个真实数据集上,我们的方法优于几个基线和基于循环神经网络的最先进方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D Convolutional Networks for Session-based Recommendation with Content Features
In many real-life recommendation settings, user profiles and past activities are not available. The recommender system should make predictions based on session data, e.g. session clicks and descriptions of clicked items. Conventional recommendation approaches, which rely on past user-item interaction data, cannot deliver accurate results in these situations. In this paper, we describe a method that combines session clicks and content features such as item descriptions and item categories to generate recommendations. To model these data, which are usually of different types and nature, we use 3-dimensional convolutional neural networks with character-level encoding of all input data. While 3D architectures provide a natural way to capture spatio-temporal patterns, character-level networks allow modeling different data types using their raw textual representation, thus reducing feature engineering effort. We applied the proposed method to predict add-to-cart events in e-commerce websites, which is more difficult then predicting next clicks. On two real datasets, our method outperformed several baselines and a state-of-the-art method based on recurrent neural networks.
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