Learning to Ask: Conversational Product Search via Representation Learning
Jie Zou, Jimmy Xiangji Huang, Zhaochun Ren, and Evangelos Kanoulas

TL;DR
This paper introduces ConvPS, a unified generative model for conversational product search that jointly learns representations of users, queries, items, and conversations, enabling more accurate and adaptive shopping assistance.
Contribution
The paper proposes a novel ConvPS model that integrates representation learning and question asking strategies within a unified framework for conversational product search.
Findings
ConvPS significantly outperforms existing baselines.
Unified representation learning improves search accuracy.
Effective question strategies enhance user interaction.
Abstract
Online shopping platforms, such as Amazon and AliExpress, are increasingly prevalent in society, helping customers purchase products conveniently. With recent progress in natural language processing, researchers and practitioners shift their focus from traditional product search to conversational product search. Conversational product search enables user-machine conversations and through them collects explicit user feedback that allows to actively clarify the users' product preferences. Therefore, prospective research on an intelligent shopping assistant via conversations is indispensable. Existing publications on conversational product search either model conversations independently from users, queries, and products or lead to a vocabulary mismatch. In this work, we propose a new conversational product search model, ConvPS, to assist users in locating desirable items. The model is…
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Taxonomy
MethodsSparse Evolutionary Training · Focus
