# GCACL-Rec: A study on conversational recommendation via global context-aware and multi-view contrastive adversarial joint learning

**Authors:** Xianghui Li, Xiaowen Liu, Xinhuan Chen, Ming Ma, Ping Xiang, Ping Xiang, Ping Xiang

PMC · DOI: 10.1371/journal.pone.0335176 · 2025-10-30

## TL;DR

This paper introduces GCACL-Rec, a new recommendation system that improves session-based recommendations by considering user behavior across multiple sessions and using advanced learning techniques.

## Contribution

The novel contribution is the integration of global context-aware modeling and multi-view contrastive adversarial learning for session-based recommendations.

## Key findings

- GCACL-Rec outperforms existing methods on benchmark datasets like Diginetica, Tmall, and RetailRocket.
- The model effectively captures cross-session dependencies and improves recommendation accuracy through its hybrid prediction structure.

## Abstract

Session-based recommendation (SBR) aims to provide personalized recommendations based on anonymous user click sequences. Although existing methods have achieved notable progress, most focus solely on user preferences within a single session, overlooking item transitions across sessions, which limits their ability to model complex behavior patterns. To address this, we propose GCACL-Rec, a model that enhances dynamic modeling by incorporating global item transition information. It constructs a multi-scale graph structure using Multi-scale graph neural networks (MSGNN) and introduces a relative multi-head attention mechanism (RMA) to enhance cross-session dependency modeling. In addition, a multi-view contrastive-adversarial joint learning strategy (MPACL) is adopted to distinguish better relevant from irrelevant information and extract user intent more effectively. During prediction, we use a hybrid structure that combines a neural decision forest (NDF) with the softmax function to enable fine-grained decision optimization and improve feature discrimination and accuracy. Experiments on the Diginetica, Tmall and RetailRocket benchmark datasets show that GCACL-Rec outperforms existing methods, demonstrating clear advantages in cross-session recommendation tasks.

## Full-text entities

- **Genes:** TTC41P (tetratricopeptide repeat domain 41, pseudogene) [NCBI Gene 253724] {aka GNN, GNNP}
- **Diseases:** ORCID iD (MESH:C535742), CL (MESH:D007859), contrastive (MESH:D005119)
- **Chemicals:** MPACL (-), SR- (MESH:D013324)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

50 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12574935/full.md

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Source: https://tomesphere.com/paper/PMC12574935