Heterogeneous Information Crossing on Graphs for Session-based
Recommender Systems
- URL: http://arxiv.org/abs/2210.12940v1
- Date: Mon, 24 Oct 2022 04:02:33 GMT
- Title: Heterogeneous Information Crossing on Graphs for Session-based
Recommender Systems
- Authors: Xiaolin Zheng, Rui Wu, Zhongxuan Han, Chaochao Chen, Linxun Chen, Bing
Han
- Abstract summary: We propose a novel graph-based method, namely Heterogeneous Information Crossing on Graphs (HICG)
HICG captures users' current interests with their long-term preferences by effectively crossing the heterogeneous information on the graphs.
We also propose an enhanced version, named HICG-CL, which incorporates contrastive learning (CL) technique to enhance item representation ability.
- Score: 19.959021202757107
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recommender systems are fundamental information filtering techniques to
recommend content or items that meet users' personalities and potential needs.
As a crucial solution to address the difficulty of user identification and
unavailability of historical information, session-based recommender systems
provide recommendation services that only rely on users' behaviors in the
current session. However, most existing studies are not well-designed for
modeling heterogeneous user behaviors and capturing the relationships between
them in practical scenarios. To fill this gap, in this paper, we propose a
novel graph-based method, namely Heterogeneous Information Crossing on Graphs
(HICG). HICG utilizes multiple types of user behaviors in the sessions to
construct heterogeneous graphs, and captures users' current interests with
their long-term preferences by effectively crossing the heterogeneous
information on the graphs. In addition, we also propose an enhanced version,
named HICG-CL, which incorporates contrastive learning (CL) technique to
enhance item representation ability. By utilizing the item co-occurrence
relationships across different sessions, HICG-CL improves the recommendation
performance of HICG. We conduct extensive experiments on three real-world
recommendation datasets, and the results verify that (i) HICG achieves the
state-of-the-art performance by utilizing multiple types of behaviors on the
heterogeneous graph. (ii) HICG-CL further significantly improves the
recommendation performance of HICG by the proposed contrastive learning module.
Related papers
- Leveraging Knowledge Graph Embedding for Effective Conversational Recommendation [4.079573593766921]
We propose a knowledge graph based conversational recommender system (referred as KG-CRS)
Specifically, we first integrate the user-item graph and item-attribute graph into a dynamic graph, dynamically changing during the dialogue process by removing negative items or attributes.
We then learn informative embedding of users, items, and attributes by also considering propagation through neighbors on the graph.
arXiv Detail & Related papers (2024-08-02T15:38:55Z) - Neural Graph Collaborative Filtering Using Variational Inference [19.80976833118502]
We introduce variational embedding collaborative filtering (GVECF) as a novel framework to incorporate representations learned through a variational graph auto-encoder.
Our proposed method achieves up to 13.78% improvement in the recall over the test data.
arXiv Detail & Related papers (2023-11-20T15:01:33Z) - APGL4SR: A Generic Framework with Adaptive and Personalized Global
Collaborative Information in Sequential Recommendation [86.29366168836141]
We propose a graph-driven framework, named Adaptive and Personalized Graph Learning for Sequential Recommendation (APGL4SR)
APGL4SR incorporates adaptive and personalized global collaborative information into sequential recommendation systems.
As a generic framework, APGL4SR can outperform other baselines with significant margins.
arXiv Detail & Related papers (2023-11-06T01:33:24Z) - GUESR: A Global Unsupervised Data-Enhancement with Bucket-Cluster
Sampling for Sequential Recommendation [58.6450834556133]
We propose graph contrastive learning to enhance item representations with complex associations from the global view.
We extend the CapsNet module with the elaborately introduced target-attention mechanism to derive users' dynamic preferences.
Our proposed GUESR could not only achieve significant improvements but also could be regarded as a general enhancement strategy.
arXiv Detail & Related papers (2023-03-01T05:46:36Z) - Ordinal Graph Gamma Belief Network for Social Recommender Systems [54.9487910312535]
We develop a hierarchical Bayesian model termed ordinal graph factor analysis (OGFA), which jointly models user-item and user-user interactions.
OGFA not only achieves good recommendation performance, but also extracts interpretable latent factors corresponding to representative user preferences.
We extend OGFA to ordinal graph gamma belief network, which is a multi-stochastic-layer deep probabilistic model.
arXiv Detail & Related papers (2022-09-12T09:19:22Z) - Self-Supervised Hypergraph Transformer for Recommender Systems [25.07482350586435]
Self-Supervised Hypergraph Transformer (SHT)
Self-Supervised Hypergraph Transformer (SHT)
Cross-view generative self-supervised learning component is proposed for data augmentation over the user-item interaction graph.
arXiv Detail & Related papers (2022-07-28T18:40:30Z) - Hypergraph Contrastive Collaborative Filtering [44.8586906335262]
We propose a new self-supervised recommendation framework Hypergraph Contrastive Collaborative Filtering (HCCF)
HCCF captures local and global collaborative relations with a hypergraph-enhanced cross-view contrastive learning architecture.
Our model effectively integrates the hypergraph structure encoding with self-supervised learning to reinforce the representation quality of recommender systems.
arXiv Detail & Related papers (2022-04-26T10:06:04Z) - Knowledge-Enhanced Hierarchical Graph Transformer Network for
Multi-Behavior Recommendation [56.12499090935242]
This work proposes a Knowledge-Enhanced Hierarchical Graph Transformer Network (KHGT) to investigate multi-typed interactive patterns between users and items in recommender systems.
KHGT is built upon a graph-structured neural architecture to capture type-specific behavior characteristics.
We show that KHGT consistently outperforms many state-of-the-art recommendation methods across various evaluation settings.
arXiv Detail & Related papers (2021-10-08T09:44:00Z) - Hyper Meta-Path Contrastive Learning for Multi-Behavior Recommendation [61.114580368455236]
User purchasing prediction with multi-behavior information remains a challenging problem for current recommendation systems.
We propose the concept of hyper meta-path to construct hyper meta-paths or hyper meta-graphs to explicitly illustrate the dependencies among different behaviors of a user.
Thanks to the recent success of graph contrastive learning, we leverage it to learn embeddings of user behavior patterns adaptively instead of assigning a fixed scheme to understand the dependencies among different behaviors.
arXiv Detail & Related papers (2021-09-07T04:28:09Z) - Dynamic Graph Collaborative Filtering [64.87765663208927]
Dynamic recommendation is essential for recommender systems to provide real-time predictions based on sequential data.
Here we propose Dynamic Graph Collaborative Filtering (DGCF), a novel framework leveraging dynamic graphs to capture collaborative and sequential relations.
Our approach achieves higher performance when the dataset contains less action repetition, indicating the effectiveness of integrating dynamic collaborative information.
arXiv Detail & Related papers (2021-01-08T04:16:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.