Modern recommender systems face an increasing need to explain their recommendations. Despite considerable progress in this area, evaluating the quality of explanations remains a significant challenge for researchers and practitioners. Prior work mainly conducts human study to evaluate explanation quality, which is usually expensive, time-consuming, and prone to human bias. In this paper, we propose an offline evaluation method that can be computed without human involvement. To evaluate an explanation, our method quantifies its counterfactual impact on the recommendation. To validate the effectiveness of our method, we carry out an online user study. We show that, compared to conventional methods, our method can produce evaluation scores mor...
Review-based recommender systems (RS) have shown great potential in helping users manage information...
Counterfactual explanations interpret the recommendation mechanism via exploring how minimal alterat...
Understanding why specific items are recommended to users can significantly increase their trust and...
This chapter gives an overview of the area of explanations in recommender systems. We approach the l...
The Thirty-First International FLAIRS Conference (FLAIRS-31), Florida, United States of America, 21-...
International audienceInterpretable explanations for recommender systems and other machine learning ...
Explainable AI (XAI) has grown as an important field over the years. As more complicated AI systems ...
Since recommender systems play an important role in our online experience today and are involved in ...
© 2019 Association for Computing Machinery. Recommender systems have been increasingly used in onlin...
Recommender systems have become a popular technique for helping users select desirable books, movies...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
UMAP'19: 27th Conference on User Modeling, Adaptation and Personalization, Larnaca, Cyprus, 9-12 Jun...
The 24th Irish Conference on Artificial Intelligence and Cognitive Science, University College Dubli...
Recommender systems are ubiquitous in most of our interactions in the current digital world. Whether...
IUI 2016. 21st International Conference on Intelligent User Interfaces, Sonoma, California, USAThis ...
Review-based recommender systems (RS) have shown great potential in helping users manage information...
Counterfactual explanations interpret the recommendation mechanism via exploring how minimal alterat...
Understanding why specific items are recommended to users can significantly increase their trust and...
This chapter gives an overview of the area of explanations in recommender systems. We approach the l...
The Thirty-First International FLAIRS Conference (FLAIRS-31), Florida, United States of America, 21-...
International audienceInterpretable explanations for recommender systems and other machine learning ...
Explainable AI (XAI) has grown as an important field over the years. As more complicated AI systems ...
Since recommender systems play an important role in our online experience today and are involved in ...
© 2019 Association for Computing Machinery. Recommender systems have been increasingly used in onlin...
Recommender systems have become a popular technique for helping users select desirable books, movies...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
UMAP'19: 27th Conference on User Modeling, Adaptation and Personalization, Larnaca, Cyprus, 9-12 Jun...
The 24th Irish Conference on Artificial Intelligence and Cognitive Science, University College Dubli...
Recommender systems are ubiquitous in most of our interactions in the current digital world. Whether...
IUI 2016. 21st International Conference on Intelligent User Interfaces, Sonoma, California, USAThis ...
Review-based recommender systems (RS) have shown great potential in helping users manage information...
Counterfactual explanations interpret the recommendation mechanism via exploring how minimal alterat...
Understanding why specific items are recommended to users can significantly increase their trust and...