核心概念
The author proposes a Causal Disentanglement-based framework, CDRSB, to regulate social influence bias in social recommendation systems by disentangling interest and social influence embeddings. This approach aims to enhance recommendation performance.
摘要
The content discusses the issue of social influence bias in social recommendation systems and introduces a novel framework, CDRSB, to address this problem. By disentangling user and item embeddings into interest and social influence components, the model aims to improve recommendation accuracy. Experimental results on real-world datasets demonstrate the effectiveness of CDRSB compared to existing baselines.
The paper highlights that not all biases are detrimental, as some recommendations from friends align with user interests. Blindly eliminating biases may lead to loss of essential information. The proposed method seeks to regulate social influence bias while preserving its positive effects.
Key points include:
- Addressing social influence bias in recommendation systems.
- Proposal of CDRSB framework for disentangling interest and social influence embeddings.
- Importance of regulating bias without sacrificing meaningful recommendations.
- Experimental validation on real-world datasets showcasing the effectiveness of CDRSB.
統計資料
RMSE: 0.8246, 0.5950, 0.9404, 0.7078
MAE: 0.6759, 0.5128, 0.6695, 0.5277
引述
"We propose a causal disentanglement-based framework for regulating social influence bias in social recommendations."
"Some items recommended by friends may align with the user’s interests and deserve to be recommended."