Learning to Ask: Question-based Sequential Bayesian Product Search
Jie Zou, Evangelos Kanoulas

TL;DR
This paper introduces QSBPS, an interactive question-based Bayesian method that improves online product search by actively querying users about product entities, leading to better matching accuracy.
Contribution
It proposes a novel interactive product search approach that uses entity-based questions and Bayesian learning to enhance retrieval performance over traditional methods.
Findings
QSBPS significantly outperforms state-of-the-art baselines.
The method effectively learns user preferences and product relevance.
Interactive questioning improves search accuracy in e-commerce.
Abstract
Product search is generally recognized as the first and foremost stage of online shopping and thus significant for users and retailers of e-commerce. Most of the traditional retrieval methods use some similarity functions to match the user's query and the document that describes a product, either directly or in a latent vector space. However, user queries are often too general to capture the minute details of the specific product that a user is looking for. In this paper, we propose a novel interactive method to effectively locate the best matching product. The method is based on the assumption that there is a set of candidate questions for each product to be asked. In this work, we instantiate this candidate set by making the hypothesis that products can be discriminated by the entities that appear in the documents associated with them. We propose a Question-based Sequential Bayesian…
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Taxonomy
TopicsWeb Data Mining and Analysis · Information Retrieval and Search Behavior · Advanced Image and Video Retrieval Techniques
