skip to main content
Bibliometrics
Skip Table Of Content Section
research-article
Open Access
Collaborative Sequential Recommendations via Multi-view GNN-transformers
Article No.: 141, Pages 1–27https://doi.org/10.1145/3649436

Sequential recommendation systems aim to exploit users’ sequential behavior patterns to capture their interaction intentions and improve recommendation accuracy. Existing sequential recommendation methods mainly focus on modeling the items’ chronological ...

research-article
Open Access
Toward Bias-Agnostic Recommender Systems: A Universal Generative Framework
Article No.: 142, Pages 1–30https://doi.org/10.1145/3655617

User behavior data, such as ratings and clicks, has been widely used to build personalizing models for recommender systems. However, many unflattering factors (e.g., popularity, ranking position, users’ selection) significantly affect the performance of ...

research-article
Document-level Relation Extraction with Progressive Self-distillation
Article No.: 143, Pages 1–34https://doi.org/10.1145/3656168

Document-level relation extraction (RE) aims to simultaneously predict relations (including no-relation cases denoted as NA) between all entity pairs in a document. It is typically formulated as a relation classification task with entities pre-detected in ...

research-article
Multi-Hop Multi-View Memory Transformer for Session-Based Recommendation
Article No.: 144, Pages 1–28https://doi.org/10.1145/3663760

A Session-Based Recommendation (SBR) seeks to predict users’ future item preferences by analyzing their interactions with previously clicked items. In recent approaches, Graph Neural Networks (GNNs) have been commonly applied to capture item relations ...

Subjects

Comments