English

SessionIntentBench: A Multi-task Inter-session Intention-shift Modeling Benchmark for E-commerce Customer Behavior Understanding

Computation and Language 2026-04-13 v2

Abstract

Session history is a common way of recording user interacting behaviors throughout a browsing activity with multiple products. For example, if an user clicks a product webpage and then leaves, it might because there are certain features that don't satisfy the user, which serve as an important indicator of on-the-spot user preferences. However, all prior works fail to capture and model customer intention effectively because insufficient information exploitation and only apparent information like descriptions and titles are used. There is also a lack of data and corresponding benchmark for explicitly modeling intention in E-commerce product purchase sessions. To address these issues, we introduce the concept of an intention tree and propose a dataset curation pipeline. Together, we construct a sibling multimodal benchmark, SessionIntentBench, that evaluates L(V)LMs' capability on understanding inter-session intention shift with four subtasks. With 1,952,177 intention entries, 1,132,145 session intention trajectories, and 13,003,664 available tasks mined using 10,905 sessions, we provide a scalable way to exploit the existing session data for customer intention understanding. We conduct human annotations to collect ground-truth label for a subset of collected data to form an evaluation gold set. Extensive experiments on the annotated data further confirm that current L(V)LMs fail to capture and utilize the intention across the complex session setting. Further analysis show injecting intention enhances LLMs' performances.

Keywords

Cite

@article{arxiv.2507.20185,
  title  = {SessionIntentBench: A Multi-task Inter-session Intention-shift Modeling Benchmark for E-commerce Customer Behavior Understanding},
  author = {Yuqi Yang and Weiqi Wang and Baixuan Xu and Wei Fan and Qing Zong and Chunkit Chan and Zheye Deng and Xin Liu and Yifan Gao and Changlong Yu and Chen Luo and Yang Li and Zheng Li and Qingyu Yin and Bing Yin and Yangqiu Song},
  journal= {arXiv preprint arXiv:2507.20185},
  year   = {2026}
}

Comments

Findings of ACL 2026

R2 v1 2026-07-01T04:20:46.645Z