Modeling Multiple Coexisting Category-Level Intentions for Next Item Recommendation

Yanan Xu, Yanmin Zhu, Jiadi Yu
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引用次数: 7

Abstract

Purchase intentions have a great impact on future purchases and thus can be exploited for making recommendations. However, purchase intentions are typically complex and may change from time to time. Through empirical study with two e-commerce datasets, we observe that behaviors of multiple types can indicate user intentions and a user may have multiple coexisting category-level intentions that evolve over time. In this article, we propose a novel Intention-Aware Recommender System (IARS) which consists of four components for mining such complex intentions from user behaviors of multiple types. In the first component, we utilize several Recurrent Neural Networks (RNNs) and an attention layer to model diverse user intentions simultaneously and design two kinds of Multi-behavior GRU (MGRU) cells to deal with heterogeneous behaviors. To reveal user intentions, we carefully design three tasks that share representations from MGRUs. The next-item recommendation is the main task and leverages attention to select user intentions according to candidate items. The remaining two (item prediction and sequence comparison) are auxiliary tasks and can reveal user intentions. Extensive experiments on the two real-world datasets demonstrate the effectiveness of our models compared with several state-of-the-art recommendation methods in terms of hit ratio and NDCG.
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为下一个项目推荐建立多个共存的类别级意向模型
购买意向对未来的购买有很大的影响,因此可以用来做推荐。然而,购买意图通常是复杂的,可能会不时发生变化。通过对两个电子商务数据集的实证研究,我们发现多种类型的行为可以表明用户的意图,用户可能有多个共存的类别级意图,这些意图会随着时间的推移而演变。在本文中,我们提出了一种新的意图感知推荐系统(IARS),该系统由四个组件组成,用于从多种类型的用户行为中挖掘复杂的意图。在第一部分中,我们利用几个递归神经网络(rnn)和一个注意层同时建模不同的用户意图,并设计了两种多行为GRU (MGRU)单元来处理异构行为。为了揭示用户意图,我们精心设计了三个任务,它们共享来自mgru的表示。下一项推荐是主要任务,它利用注意力根据候选项选择用户意图。剩下的两个(项目预测和序列比较)是辅助任务,可以揭示用户的意图。在两个真实数据集上进行的大量实验表明,与几种最先进的推荐方法相比,我们的模型在命中率和NDCG方面是有效的。
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