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U-NEED: A Fine-grained Dataset for User Needs-Centric E-commerce Conversational Recommendation

Authors :
Liu, Yuanxing
Zhang, Weinan
Dong, Baohua
Fan, Yan
Wang, Hang
Feng, Fan
Chen, Yifan
Zhuang, Ziyu
Cui, Hengbin
Li, Yongbin
Che, Wanxiang
Liu, Yuanxing
Zhang, Weinan
Dong, Baohua
Fan, Yan
Wang, Hang
Feng, Fan
Chen, Yifan
Zhuang, Ziyu
Cui, Hengbin
Li, Yongbin
Che, Wanxiang
Publication Year :
2023

Abstract

Conversational recommender systems (CRSs) aim to understand the information needs and preferences expressed in a dialogue to recommend suitable items to the user. Most of the existing conversational recommendation datasets are synthesized or simulated with crowdsourcing, which has a large gap with real-world scenarios. To bridge the gap, previous work contributes a dataset E-ConvRec, based on pre-sales dialogues between users and customer service staff in E-commerce scenarios. However, E-ConvRec only supplies coarse-grained annotations and general tasks for making recommendations in pre-sales dialogues. Different from that, we use real user needs as a clue to explore the E-commerce conversational recommendation in complex pre-sales dialogues, namely user needs-centric E-commerce conversational recommendation (UNECR). In this paper, we construct a user needs-centric E-commerce conversational recommendation dataset (U-NEED) from real-world E-commerce scenarios. U-NEED consists of 3 types of resources: (i) 7,698 fine-grained annotated pre-sales dialogues in 5 top categories (ii) 333,879 user behaviors and (iii) 332,148 product knowledge tuples. To facilitate the research of UNECR, we propose 5 critical tasks: (i) pre-sales dialogue understanding (ii) user needs elicitation (iii) user needs-based recommendation (iv) pre-sales dialogue generation and (v) pre-sales dialogue evaluation. We establish baseline methods and evaluation metrics for each task. We report experimental results of 5 tasks on U-NEED. We also report results in 3 typical categories. Experimental results indicate that the challenges of UNECR in various categories are different.<br />Comment: SIGIR23 Resource Track

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381623916
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1145.3539618.3591878