Autoseqrec: Autoencoder for efficient sequential recommendation
Sequential recommendation demonstrates the capability to recommend items by modeling
the sequential behavior of users. Traditional methods typically treat users as sequences of …
the sequential behavior of users. Traditional methods typically treat users as sequences of …
Challenging the myth of graph collaborative filtering: a reasoned and reproducibility-driven analysis
The success of graph neural network-based models (GNNs) has significantly advanced
recommender systems by effectively modeling users and items as a bipartite, undirected …
recommender systems by effectively modeling users and items as a bipartite, undirected …
Triple structural information modelling for accurate, explainable and interactive recommendation
In dynamic interaction graphs, user-item interactions usually follow heterogeneous patterns,
represented by different structural information, such as user-item co-occurrence, sequential …
represented by different structural information, such as user-item co-occurrence, sequential …
Target-driven user preference transferring recommendation
Y Lian, L Zhang, C Song - Expert Systems with Applications, 2024 - Elsevier
In the age of information overload, modern recommendation systems provide an important
role in helping people screen massive information. With the development of deep learning …
role in helping people screen massive information. With the development of deep learning …
Recommendation unlearning via matrix correction
Recommender systems are important for providing personalized services to users, but the
vast amount of collected user data has raised concerns about privacy (eg, sensitive data) …
vast amount of collected user data has raised concerns about privacy (eg, sensitive data) …
Turbo-cf: Matrix decomposition-free graph filtering for fast recommendation
A series of graph filtering (GF)-based collaborative filtering (CF) showcases state-of-the-art
performance on the recommendation accuracy by using a low-pass filter (LPF) without a …
performance on the recommendation accuracy by using a low-pass filter (LPF) without a …
PolyCF: Towards the Optimal Spectral Graph Filters for Collaborative Filtering
Collaborative Filtering (CF) is a pivotal research area in recommender systems that
capitalizes on collaborative similarities between users and items to provide personalized …
capitalizes on collaborative similarities between users and items to provide personalized …
Frequency-aware Graph Signal Processing for Collaborative Filtering
Graph Signal Processing (GSP) based recommendation algorithms have recently attracted
lots of attention due to its high efficiency. However, these methods failed to consider the …
lots of attention due to its high efficiency. However, these methods failed to consider the …
Hierarchical Graph Signal Processing for Collaborative Filtering
Graph Signal Processing (GSP) has proven to be a highly effective and efficient tool for
predicting user future interactions in recommender systems. However, current GSP methods …
predicting user future interactions in recommender systems. However, current GSP methods …
RAH! RecSys–Assistant–Human: A Human-Centered Recommendation Framework With LLM Agents
The rapid evolution of the web has led to an exponential growth in content. Recommender
systems play a crucial role in human–computer interaction (HCI) by tailoring content based …
systems play a crucial role in human–computer interaction (HCI) by tailoring content based …