English

User Memory Reasoning for Conversational Recommendation

Computation and Language 2020-06-02 v1

Abstract

We study a conversational recommendation model which dynamically manages users' past (offline) preferences and current (online) requests through a structured and cumulative user memory knowledge graph, to allow for natural interactions and accurate recommendations. For this study, we create a new Memory Graph (MG) <--> Conversational Recommendation parallel corpus called MGConvRex with 7K+ human-to-human role-playing dialogs, grounded on a large-scale user memory bootstrapped from real-world user scenarios. MGConvRex captures human-level reasoning over user memory and has disjoint training/testing sets of users for zero-shot (cold-start) reasoning for recommendation. We propose a simple yet expandable formulation for constructing and updating the MG, and a reasoning model that predicts optimal dialog policies and recommendation items in unconstrained graph space. The prediction of our proposed model inherits the graph structure, providing a natural way to explain the model's recommendation. Experiments are conducted for both offline metrics and online simulation, showing competitive results.

Keywords

Cite

@article{arxiv.2006.00184,
  title  = {User Memory Reasoning for Conversational Recommendation},
  author = {Hu Xu and Seungwhan Moon and Honglei Liu and Bing Liu and Pararth Shah and Bing Liu and Philip S. Yu},
  journal= {arXiv preprint arXiv:2006.00184},
  year   = {2020}
}
R2 v1 2026-06-23T15:55:32.932Z