Modeling Multi-Intent Basket Sequences for Next-Basket Recommendation

Quoc-Viet Pham Hoang, Duc-Trong Le
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引用次数: 1

Abstract

Recommendation systems have a preponderance in assisting customers to save time by suggesting relevant options. With this convenience, a customer may purchase multiple items in a browsing session, referred to as an item basket. The notion of basket manifests his underlying preference of multiple implicit intentions, which becomes more sophisticated once considering the basket sequence of his chronological intersession list. With the objective of modeling basket sequences, most of previous methods hypothesize a homogeneous intention in each basket. The exploitation on multi-intent basket sequences for the recommendation task becomes an emerging demand. In this work, we present a novel framework named MIBS to model multi-intent basket sequences to recommend next basket of relevant items. Given a user's basket sequence, each basket is encoded via aggregating the item-item correlation matrix with a latent intent parameter matrix to generate the respective basket representation. This representation is later fed into a LSTM layer to infer the sequential encoding, which is also combined with the correlation matrix and the multi-intent matrix to produce item scores. The top-K items with the highest scores are employed to form the next-basket suggestion. Comprehensive experiments on three publicly-available datasets demonstrate the superiority of MIBS compared against state-of-the-art baselines for the next-basket recommendation task.
下一篮推荐的多意图篮序列建模
推荐系统在帮助客户节省时间方面具有优势,可以通过建议相关选项来节省时间。有了这种便利,客户可以在一个浏览会话中购买多个商品,称为购物篮。篮子的概念体现了他对多重内隐意图的潜在偏好,考虑到他的时间间隔列表的篮子顺序,这种偏好变得更加复杂。为了对篮序列进行建模,以往的方法大多假设每个篮都有一个均匀的意图。针对推荐任务开发多意图篮序列是一个新兴的需求。在这项工作中,我们提出了一个名为MIBS的新框架来建模多意图篮子序列,以推荐下一个相关项目的篮子。给定用户的购物篮序列,每个购物篮都通过将商品-商品相关矩阵与潜在意图参数矩阵聚合来编码,以生成相应的购物篮表示。该表示随后被输入LSTM层来推断顺序编码,并与相关矩阵和多意图矩阵相结合来生成项目分数。得分最高的前k个项目被用来形成下一个篮子的建议。在三个公开可用的数据集上进行的综合实验表明,与最新的下一篮子推荐任务基线相比,MIBS具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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