个性化的,顺序的,细心的,有度量意识的产品搜索

Yaoxin Pan, Shangsong Liang, Jiaxin Ren, Zaiqiao Meng, Qiang Zhang
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引用次数: 7

摘要

个性化产品搜索任务的目标是根据用户的输入查询和他/她的购买历史记录检索产品的排名列表。为了解决这个问题,我们提出了PSAM模型,一个个性化、顺序、注意和度量感知(PSAM)模型,它根据用户顺序购买历史数据和相应的顺序查询学习三种不同类别实体的语义表示,即用户、查询和产品。具体而言,设计了基于查询的关注LSTM (QA-LSTM)模型和注意机制来推断用户的动态嵌入,从而能够捕获用户的短期和长期偏好。为了获得这三类实体的更细粒度的嵌入,我们的模型中部署了一个度量感知目标来强制推断的嵌入服从三角形不等式,这是一个更现实的产品搜索距离测量。在四个基准数据集上进行的实验表明,我们的PSAM模型在NDCG@20下的有效性方面显著优于最先进的产品搜索基线,提高了50.9%。我们的可视化实验进一步说明了学习到的产品嵌入能够区分不同类型的产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized, Sequential, Attentive, Metric-Aware Product Search
The task of personalized product search aims at retrieving a ranked list of products given a user’s input query and his/her purchase history. To address this task, we propose the PSAM model, a Personalized, Sequential, Attentive and Metric-aware (PSAM) model, that learns the semantic representations of three different categories of entities, i.e., users, queries, and products, based on user sequential purchase historical data and the corresponding sequential queries. Specifically, a query-based attentive LSTM (QA-LSTM) model and an attention mechanism are designed to infer users dynamic embeddings, which is able to capture their short-term and long-term preferences. To obtain more fine-grained embeddings of the three categories of entities, a metric-aware objective is deployed in our model to force the inferred embeddings subject to the triangle inequality, which is a more realistic distance measurement for product search. Experiments conducted on four benchmark datasets show that our PSAM model significantly outperforms the state-of-the-art product search baselines in terms of effectiveness by up to 50.9% improvement under NDCG@20. Our visualization experiments further illustrate that the learned product embeddings are able to distinguish different types of products.
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