Understanding why specific items are recommended to users can significantly increase their trust and satisfaction in the system. While neural recommenders have become the state-of-the-art in recent years, the complexity of deep models still makes the generation of tangible explanations for end users a challenging problem. Existing methods are usually based on attention distributions over a variety of features, which are still questionable regarding their suitability as explanations, and rather unwieldy to grasp for an end user. Counterfactual explanations based on a small set of the user's own actions have been shown to be an acceptable solution to the tangibility problem. However, current work on such counterfactuals cannot be readily appl...
Massive deployment of Graph Neural Networks (GNNs) in high-stake applications generates a strong dem...
In recent years, Graph Neural Networks have reported outstanding performance in tasks like community...
Counterfactual explanations focus on 'actionable knowledge' to help end-users understand how a machi...
Counterfactual explanations interpret the recommendation mechanism via exploring how minimal alterat...
Interpretable explanations for recommender systems and other machine learning models are crucial to ...
Top-N recommendation, which aims to learn user ranking-based preference, has long been a fundamental...
Fairness-aware recommendation eliminates discrimination issues to build trustworthy recommendation s...
Causal reasoning and logical reasoning are two important types of reasoning abilities for human inte...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
Modern recommender systems face an increasing need to explain their recommendations. Despite conside...
Recommender systems are ubiquitous in most of our interactions in the current digital world. Whether...
UMAP'19: 27th Conference on User Modeling, Adaptation and Personalization, Larnaca, Cyprus, 9-12 Jun...
Recommender systems, predictive models that provide lists of personalized suggestions, have become i...
Modern recommender systems utilize users' historical behaviors to generate personalized recommendati...
State-of-the-art recommender system (RS) mostly rely on complex deep neural network (DNN) model stru...
Massive deployment of Graph Neural Networks (GNNs) in high-stake applications generates a strong dem...
In recent years, Graph Neural Networks have reported outstanding performance in tasks like community...
Counterfactual explanations focus on 'actionable knowledge' to help end-users understand how a machi...
Counterfactual explanations interpret the recommendation mechanism via exploring how minimal alterat...
Interpretable explanations for recommender systems and other machine learning models are crucial to ...
Top-N recommendation, which aims to learn user ranking-based preference, has long been a fundamental...
Fairness-aware recommendation eliminates discrimination issues to build trustworthy recommendation s...
Causal reasoning and logical reasoning are two important types of reasoning abilities for human inte...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
Modern recommender systems face an increasing need to explain their recommendations. Despite conside...
Recommender systems are ubiquitous in most of our interactions in the current digital world. Whether...
UMAP'19: 27th Conference on User Modeling, Adaptation and Personalization, Larnaca, Cyprus, 9-12 Jun...
Recommender systems, predictive models that provide lists of personalized suggestions, have become i...
Modern recommender systems utilize users' historical behaviors to generate personalized recommendati...
State-of-the-art recommender system (RS) mostly rely on complex deep neural network (DNN) model stru...
Massive deployment of Graph Neural Networks (GNNs) in high-stake applications generates a strong dem...
In recent years, Graph Neural Networks have reported outstanding performance in tasks like community...
Counterfactual explanations focus on 'actionable knowledge' to help end-users understand how a machi...