Heterogeneous Sequel-Aware Graph Neural Networks for Sequential Learning
By: Anushka Tiwari, Haimonti Dutta, Shahrzad Khanizadeh
Potential Business Impact:
Suggests better movies by watching what you watch next.
Graph-based recommendation systems use higher-order user and item embeddings for next-item predictions. Dynamically adding collaborative signals from neighbors helps to use similar users' preferences during learning. While item-item correlations and their impact on recommendations have been studied, the efficacy of temporal item sequences for recommendations is much less explored. In this paper, we examine temporal item sequence (sequel-aware) embeddings along with higher-order user embeddings and show that sequel-aware Graph Neural Networks have better (or comparable) recommendation performance than graph-based recommendation systems that do not consider sequel information. Extensive empirical results comparing Heterogeneous Sequel-aware Graph Neural Networks (HSAL-GNNs) to other algorithms for sequential learning (such as transformers, graph neural networks, auto-encoders) are presented on three synthetic and three real-world datasets. Our results indicate that the incorporation of sequence information from items greatly enhances recommendations.
Similar Papers
Recommendation System in Advertising and Streaming Media: Unsupervised Data Enhancement Sequence Suggestions
Information Retrieval
Helps websites guess what you'll like next.
Time Matters: Enhancing Sequential Recommendations with Time-Guided Graph Neural ODEs
Information Retrieval
Helps online stores guess what you want to buy.
Simple and Efficient Heterogeneous Temporal Graph Neural Network
Machine Learning (CS)
Makes computers understand changing online connections faster.