用基于注意力的编码器-解码器架构建模用户会话和意图

Pablo Loyola, Chen Liu, Yu Hirate
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引用次数: 66

摘要

我们提出了一个编码器-解码器神经架构来模拟用户会话和意图使用浏览和购买数据从一个大型电子商务公司。我们首先确定每个会话中项目之间的源-目标转换对。然后,将源项目集传递给编码器,解码器使用编码器的学习表示来估计目标项目的序列。因此,由于该过程是成对执行的,我们假设该模型可以以更细粒度的方式捕获转换规律。此外,我们的模型结合了一个注意机制来明确地学习序列中更具表现力的部分,以提高性能。除了对用户会话建模之外,我们还通过附加第二个解码器来扩展原始架构,该解码器通过联合训练来预测用户在每个会话中的购买意图。有了这个,我们想要探索模型能在多大程度上捕获会话间依赖关系。我们进行了一项实证研究,将其与大型真实世界数据集的几个基线进行比较,结果表明我们的方法在物品和意图预测方面都具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling User Session and Intent with an Attention-based Encoder-Decoder Architecture
We propose an encoder-decoder neural architecture to model user session and intent using browsing and purchasing data from a large e-commerce company. We begin by identifying the source-target transition pairs between items within each session. Then, the set of source items are passed through an encoder, whose learned representation is used by the decoder to estimate the sequence of target items. Therefore, as this process is performed pair-wise, we hypothesize that the model could capture the transition regularities in a more fine grained way. Additionally, our model incorporates an attention mechanism to explicitly learn the more expressive portions of the sequences in order to improve performance. Besides modeling the user sessions, we also extended the original architecture by means of attaching a second decoder that is jointly trained to predict the purchasing intent of user in each session. With this, we want to explore to what extent the model can capture inter session dependencies. We performed an empirical study comparing against several baselines on a large real world dataset, showing that our approach is competitive in both item and intent prediction.
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