User-Inspired Posterior Network for Recommendation Reason Generation
Haolan Zhan, Hainan Zhang, Hongshen Chen, Lei Shen, Yanyan Lan, Zhuoye, Ding, Dawei Yin

TL;DR
This paper introduces a user-inspired posterior transformer model that generates recommendation reasons by integrating product attributes and user-generated QA discussions, enhancing relevance especially for popular products.
Contribution
The paper proposes a novel multi-source posterior transformer that effectively incorporates user-generated content to improve recommendation reason generation.
Findings
Model outperforms traditional generative models.
Focuses more on user-cared aspects than baselines.
Effective for popular and long-tail products.
Abstract
Recommendation reason generation, aiming at showing the selling points of products for customers, plays a vital role in attracting customers' attention as well as improving user experience. A simple and effective way is to extract keywords directly from the knowledge-base of products, i.e., attributes or title, as the recommendation reason. However, generating recommendation reason from product knowledge doesn't naturally respond to users' interests. Fortunately, on some E-commerce websites, there exists more and more user-generated content (user-content for short), i.e., product question-answering (QA) discussions, which reflect user-cared aspects. Therefore, in this paper, we consider generating the recommendation reason by taking into account not only the product attributes but also the customer-generated product QA discussions. In reality, adequate user-content is only possible for…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Topic Modeling · Sentiment Analysis and Opinion Mining
