A survey on causal inference for recommendation
Causal inference has recently garnered significant interest among recommender system
(RS) researchers due to its ability to dissect cause-and-effect relationships and its broad …
(RS) researchers due to its ability to dissect cause-and-effect relationships and its broad …
Information theoretic learning-enhanced dual-generative adversarial networks with causal representation for robust OOD generalization
Recently, machine/deep learning techniques are achieving remarkable success in a variety
of intelligent control and management systems, promising to change the future of artificial …
of intelligent control and management systems, promising to change the future of artificial …
Be causal: De-biasing social network confounding in recommendation
In recommendation systems, the existence of the missing-not-at-random (MNAR) problem
results in the selection bias issue, degrading the recommendation performance ultimately. A …
results in the selection bias issue, degrading the recommendation performance ultimately. A …
Addressing confounding feature issue for causal recommendation
In recommender systems, some features directly affect whether an interaction would
happen, making the happened interactions not necessarily indicate user preference. For …
happen, making the happened interactions not necessarily indicate user preference. For …
Understanding user intent modeling for conversational recommender systems: a systematic literature review
User intent modeling in natural language processing deciphers user requests to allow for
personalized responses. The substantial volume of research (exceeding 13,000 …
personalized responses. The substantial volume of research (exceeding 13,000 …
Counterfactual explainable conversational recommendation
Conversational Recommender Systems (CRSs) fundamentally differ from traditional
recommender systems by interacting with users in a conversational session to accurately …
recommender systems by interacting with users in a conversational session to accurately …
Counterfactual video recommendation for duration debiasing
Duration bias widely exists in video recommendations, where models tend to recommend
short videos for the higher ratio of finish playing and thus possibly fail to capture users' true …
short videos for the higher ratio of finish playing and thus possibly fail to capture users' true …
Causal inference for leveraging image-text matching bias in multi-modal fake news detection
Multi-modal fake news detection has drawn considerable attention with the development of
online social media. Existing methods primarily conduct direct cross-modal fusion, while …
online social media. Existing methods primarily conduct direct cross-modal fusion, while …
Counterfactual explanation for fairness in recommendation
Fairness-aware recommendation alleviates discrimination issues to build trustworthy
recommendation systems. Explaining the causes of unfair recommendations is critical, as it …
recommendation systems. Explaining the causes of unfair recommendations is critical, as it …
Deconfounded recommendation via causal intervention
Traditional recommenders suffer from hidden confounding factors, leading to the spurious
correlations between user/item profiles and user preference prediction, ie, the confounding …
correlations between user/item profiles and user preference prediction, ie, the confounding …