There has been growing attention on explainable recommendation that is able to provide high-quality results as well as intuitive explanations. However, most existing studies use offline prediction strategies where recommender systems are trained once while used forever, which ignores the dynamic and evolving nature of user–item interactions. There are two main issues with these methods. First, their random dataset split setting will result in data leakage that knowledge should not be known at the time of training is utilized. Second, the dynamic characteristics of user preferences are overlooked, resulting in a model aging issue where the model’s performance degrades along with time. In this paper, we propose an updating enabled online pred...
The problem of constructing explanations for recommendations in situations of cold start and shillin...
The problem of constructing explanations for recommendations in situations of cold start and shillin...
Modeling the temporal context efficiently and effectively is essential to provide useful recommendat...
Random walks on bipartite networks have been used extensively to design personalized recommendation ...
Recommender models are hard to evaluate, particularly under offline setting. In this paper, we provi...
Recommender models are hard to evaluate, particularly under offline setting. In this paper, we prov...
Recommender Systems suggest items that are likely to be the most interesting for users, based on the...
Most recommender algorithms in use today are slow to adapt to changes in user preferences. This is b...
A Recommendation system that recommends an appropriate item by predicting a user's preference has be...
Recommender systems are widely used for suggesting books, education materials, and products to users...
Recommender systems have been accompanied by many applications in both academia and industry. Among ...
Recommendation has been a highly relevant and lucrative field of expertise for quite some time. Sinc...
The problem of matching knowledge in the temporal aspect when constructing explanations for recommen...
In real-world scenarios, user preferences for items are constantly drifting over time as item percep...
The problem of matching knowledge in the temporal aspect when constructing explanations for recommen...
The problem of constructing explanations for recommendations in situations of cold start and shillin...
The problem of constructing explanations for recommendations in situations of cold start and shillin...
Modeling the temporal context efficiently and effectively is essential to provide useful recommendat...
Random walks on bipartite networks have been used extensively to design personalized recommendation ...
Recommender models are hard to evaluate, particularly under offline setting. In this paper, we provi...
Recommender models are hard to evaluate, particularly under offline setting. In this paper, we prov...
Recommender Systems suggest items that are likely to be the most interesting for users, based on the...
Most recommender algorithms in use today are slow to adapt to changes in user preferences. This is b...
A Recommendation system that recommends an appropriate item by predicting a user's preference has be...
Recommender systems are widely used for suggesting books, education materials, and products to users...
Recommender systems have been accompanied by many applications in both academia and industry. Among ...
Recommendation has been a highly relevant and lucrative field of expertise for quite some time. Sinc...
The problem of matching knowledge in the temporal aspect when constructing explanations for recommen...
In real-world scenarios, user preferences for items are constantly drifting over time as item percep...
The problem of matching knowledge in the temporal aspect when constructing explanations for recommen...
The problem of constructing explanations for recommendations in situations of cold start and shillin...
The problem of constructing explanations for recommendations in situations of cold start and shillin...
Modeling the temporal context efficiently and effectively is essential to provide useful recommendat...