TY - GEN
T1 - Disentangling user interest and conformity for recommendation with causal embedding
AU - Zheng, Yu
AU - Gao, Chen
AU - Li, Xiang
AU - He, Xiangnan
AU - Li, Yong
AU - Jin, Depeng
N1 - Publisher Copyright:
© 2021 ACM.
PY - 2021/6/3
Y1 - 2021/6/3
N2 - Recommendation models are usually trained on observational interaction data. However, observational interaction data could result from users' conformity towards popular items, which entangles users' real interest. Existing methods tracks this problem as eliminating popularity bias, e.g., by re-weighting training samples or leveraging a small fraction of unbiased data. However, the variety of user conformity is ignored by these approaches, and different causes of an interaction are bundled together as unified representations, hence robustness and interpretability are not guaranteed when underlying causes are changing. In this paper, we present DICE, a general framework that learns representations where interest and conformity are structurally disentangled, and various backbone recommendation models could be smoothly integrated. We assign users and items with separate embeddings for interest and conformity, and make each embedding capture only one cause by training with cause-specific data which is obtained according to the colliding effect of causal inference. Our proposed methodology outperforms state-of-the-art baselines with remarkable improvements on two real-world datasets on top of various backbone models. We further demonstrate that the learned embeddings successfully capture the desired causes, and show that DICE guarantees the robustness and interpretability of recommendation.
AB - Recommendation models are usually trained on observational interaction data. However, observational interaction data could result from users' conformity towards popular items, which entangles users' real interest. Existing methods tracks this problem as eliminating popularity bias, e.g., by re-weighting training samples or leveraging a small fraction of unbiased data. However, the variety of user conformity is ignored by these approaches, and different causes of an interaction are bundled together as unified representations, hence robustness and interpretability are not guaranteed when underlying causes are changing. In this paper, we present DICE, a general framework that learns representations where interest and conformity are structurally disentangled, and various backbone recommendation models could be smoothly integrated. We assign users and items with separate embeddings for interest and conformity, and make each embedding capture only one cause by training with cause-specific data which is obtained according to the colliding effect of causal inference. Our proposed methodology outperforms state-of-the-art baselines with remarkable improvements on two real-world datasets on top of various backbone models. We further demonstrate that the learned embeddings successfully capture the desired causes, and show that DICE guarantees the robustness and interpretability of recommendation.
KW - Causal embedding
KW - Popularity bias
KW - Recommender systems
UR - https://www.scopus.com/pages/publications/85107966903
U2 - 10.1145/3442381.3449788
DO - 10.1145/3442381.3449788
M3 - 会议稿件
AN - SCOPUS:85107966903
T3 - The Web Conference 2021 - Proceedings of the World Wide Web Conference, WWW 2021
SP - 2980
EP - 2991
BT - The Web Conference 2021 - Proceedings of the World Wide Web Conference, WWW 2021
PB - Association for Computing Machinery, Inc
T2 - 30th World Wide Web Conference, WWW 2021
Y2 - 19 April 2021 through 23 April 2021
ER -