利用动态标题为推荐系统提供用户评论

Shanu Vashishtha, Abhay Kumar, Lalitesh Morishetti, Kaushiki Nag, Kannan Achan
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引用次数: 0

摘要

电子商务平台拥有庞大的商品目录,可以满足客户的购物兴趣。这些平台大多通过提供优化的推荐转盘来帮助客户完成购物流程,从而帮助客户快速找到所需商品。学术文献中提出了许多模型来生成和增强这些旋转木马中商品的排名和检索集。传统上,这些旋转传送带的标题文本(页眉)保持不变。在大多数情况下,使用的是通用文本,如 "与您当前浏览的项目相似"。除了 "经常一起购买 "或 "一起考虑 "之外,我们还观察到一些固定的变化,例如包含特定属性 "来自类似卖家的其他商品 "或 "来自类似品牌的商品"。我们的工作利用了用户生成的评论,这些评论关注的是用户在与特定商品的互动过程中对该商品的特定属性(方面)的好感。我们从评论中提取这些方面,并在条件排名任务框架下训练基于图神经网络的模型。我们将我们的创新方法称为动态文本片段(DTS),它能为锚点项目及其召回集生成多个标题文本。我们的方法展示了利用用户生成的评论的潜力,并为探索日益增强的上下文感知推荐系统提供了一个独特的范例。
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Leveraging User-Generated Reviews for Recommender Systems with Dynamic Headers
E-commerce platforms have a vast catalog of items to cater to their customers' shopping interests. Most of these platforms assist their customers in the shopping process by offering optimized recommendation carousels, designed to help customers quickly locate their desired items. Many models have been proposed in academic literature to generate and enhance the ranking and recall set of items in these carousels. Conventionally, the accompanying carousel title text (header) of these carousels remains static. In most instances, a generic text such as "Items similar to your current viewing" is utilized. Fixed variations such as the inclusion of specific attributes "Other items from a similar seller" or "Items from a similar brand" in addition to "frequently bought together" or "considered together" are observed as well. This work proposes a novel approach to customize the header generation process of these carousels. Our work leverages user-generated reviews that lay focus on specific attributes (aspects) of an item that were favorably perceived by users during their interaction with the given item. We extract these aspects from reviews and train a graph neural network-based model under the framework of a conditional ranking task. We refer to our innovative methodology as Dynamic Text Snippets (DTS) which generates multiple header texts for an anchor item and its recall set. Our approach demonstrates the potential of utilizing user-generated reviews and presents a unique paradigm for exploring increasingly context-aware recommendation systems.
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