TiDGRec: Dual-Graph Modeling with Target-intention Filtering for Session-based Recommendation

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Session-based recommendation (SBR) focuses on forecasting the next item a user is likely to select using brief and anonymous sequences of interactions. Existing methods face three key challenges: (1) difficulty in distinguishing noisy transitions within sessions, (2) absence of explicit modeling for target intent, and (3) misalignment between intra- and inter-session information. We propose TiDGRec (Target-intention aware Dual-Graph Recommender), a framework designed to address these limitations through hierarchical denoising and targetguided dual-graph learning. A Target Proxy Node (TPN) is introduced into the Sequential Transition Graph (STG) to capture user intent representations. An Adaptive Target-aware Sparsifier (ATS) based on dynamic αs, adaptively filters irrelevant transitions. The learned target representation and item embeddings from the Cross-session Co-occurrence Graph (CCG) are jointly input to the Target-guided Cross-graph Filter (TCF) to enhance target-aware global relations. By connecting STG and CCG through shared target signals, TiDGRec forms a dual-graph, dual-target architecture that enhances intent alignment, suppresses semantic noise, and improves overall recommendation quality. A comprehensive evaluation across various benchmark datasets demonstrates that TiDGRec achieves superior performance compared to existing SBR methods.

Article activity feed