Towards Personalized Answer Generation in E-Commerce via
Multi-Perspective Preference Modeling
- URL: http://arxiv.org/abs/2112.13556v1
- Date: Mon, 27 Dec 2021 07:51:49 GMT
- Title: Towards Personalized Answer Generation in E-Commerce via
Multi-Perspective Preference Modeling
- Authors: Yang Deng, Yaliang Li, Wenxuan Zhang, Bolin Ding, Wai Lam
- Abstract summary: Product Question Answering (PQA) on E-Commerce platforms has attracted increasing attention as it can act as an intelligent online shopping assistant.
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.
We propose a novel multi-perspective user preference model for generating personalized answers in PQA.
- Score: 62.049330405736406
- License: http://creativecommons.org/licenses/by/4.0/
- 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 towards product aspects or
information needs. To tackle this challenge, we propose a novel Personalized
Answer GEneration method (PAGE) 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 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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