Toward Personalized Answer Generation in E-Commerce via Multi-perspective Preference Modeling

Yang Deng, Yaliang Li, Wenxuan Zhang, Bolin Ding, W. Lam
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引用次数: 16

Abstract

Recently, Product Question Answering (PQA) on E-Commerce platforms has attracted increasing attention as it can act as an intelligent online shopping assistant and improve the customer shopping experience. Its key function, automatic answer generation for product-related questions, has been studied by aiming to generate content-preserving while question-related answers. However, an important characteristic of PQA, i.e., personalization, is neglected by existing methods. It is insufficient to provide the same “completely summarized” answer to all customers, since many customers are more willing to see personalized answers with customized information only for themselves, by taking into consideration their own preferences toward product aspects or information needs. To tackle this challenge, we propose a novel Personalized Answer GEneration method with multi-perspective preference modeling, which explores historical user-generated contents to model user preference for generating personalized answers in PQA. Specifically, we first retrieve question-related user history as external knowledge to model knowledge-level user preference. Then, we leverage the Gaussian Softmax distribution model to capture latent aspect-level user preference. Finally, we develop a persona-aware pointer network to generate personalized answers in terms of both content and style by utilizing personal user preference and dynamic user vocabulary. Experimental results on real-world E-Commerce QA datasets demonstrate that the proposed method outperforms existing methods by generating informative and customized answers and show that answer generation in E-Commerce can benefit from personalization.
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基于多视角偏好模型的电子商务个性化答案生成
近年来,电子商务平台上的产品问答(PQA)越来越受到人们的关注,因为它可以作为智能的网上购物助手,改善顾客的购物体验。对其关键功能——产品相关问题的自动答案生成进行了研究,旨在生成内容保留的问题相关答案。然而,现有的方法忽略了PQA的一个重要特征,即个性化。给所有的客户提供相同的“完全总结”的答案是不够的,因为很多客户更愿意看到个性化的答案和定制的信息,只是为了他们自己,考虑到自己对产品方面的偏好或信息需求。为了解决这一挑战,我们提出了一种新的个性化答案生成方法,该方法采用多角度偏好建模,通过探索历史用户生成的内容来建模用户偏好,从而在PQA中生成个性化答案。具体来说,我们首先检索与问题相关的用户历史作为外部知识来建模知识级用户偏好。然后,我们利用高斯Softmax分布模型来捕获潜在的方面级用户偏好。最后,我们开发了一个角色感知的指针网络,利用个人用户偏好和动态用户词汇,在内容和风格方面生成个性化的答案。在实际电子商务QA数据集上的实验结果表明,本文提出的方法在生成信息丰富和个性化的答案方面优于现有方法,并表明电子商务中的答案生成可以从个性化中受益。
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