基于会话和上下文感知建议的细心RNN模型:2019年RecSys挑战的解决方案

Ricardo Gama, Hugo L. Fernandes
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引用次数: 4

摘要

在2019年的RecSys挑战中,参与者被要求从trivago搜索结果的项目/住宿列表中预测哪些项目在用户会话的最后一部分被点击过。这里我们提出第七名的解决方案。它由一个神经网络组成,旨在学习会话、上下文、序列特征和点击时显示项目的特征之间的相互作用。我们的方法使用成熟的深度学习技术,如循环神经网络、注意和自注意机制来处理可用信息的不同方面,并预测呈现项目列表上的(分类)概率分布。除了模型结构,我们还描述了一些繁重的特征工程,数据增强和其他决策/观察的漫长道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An attentive RNN model for session-based and context-aware recommendations: a solution to the RecSys challenge 2019
In the RecSys Challenge 2019 the participants were asked to predict which items, from a presented list of items/accommodations of a search result on trivago, had been clicked-on during the last part of a user's session. Here we present the 7th place solution1. It consists of a neural network designed to learn interactions between session, context, sequence features, and the features of the displayed items at the time of a click. Our approach uses well established deep learning techniques, such as Recurrent Neural Networks, Attention and self-Attention mechanisms to deal with the different aspects of the information available, and it predicts a (categorical) probability distribution over the list of presented items. In addition to the model structure we also describe the somewhat heavy feature engineering, data augmentation and other decisions/observations made a long the way.
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