Sequential Recommendation (SRs) that capture users' dynamic intents by modeling user sequential behaviors can recommend closely accurate products to users. Previous work on SRs is mostly focused on optimizing the recommendation accuracy, often ignoring the recommendation diversity, even though it is an important criterion for evaluating the recommendation performance. Most existing methods for improving the diversity of recommendations are not ideally applicable for SRs because they assume that user intents are static and rely on post-processing the list of recommendations to promote diversity. We consider both recommendation accuracy and diversity for SRs by proposing an end-to-end neural model, called Intent-aware Diversified Sequential R...
Recommender systems aim to capture the interests of users in order to provide them with tailored rec...
In recent years, recommender systems have become a popular topic in research and many applications h...
Recommender systems use data on past user preferences to predict possible future likes and interests...
The capability of extracting sequential patterns from the user-item interaction data is now becoming...
Diversity has been identified as one of the key dimensions of recommendation utility that should be ...
A user of a recommender system is more likely to be satisfied by one or more of the recommendations ...
Sequential recommendations have made great strides in accurately predicting the future behavior of u...
Many modern sequential recommender systems use deep neural networks, which can effectively estimate ...
Many modern sequential recommender systems use deep neural networks, which can effectively estimate ...
Recent years witness the success of pre-trained models to alleviate the data sparsity problem in rec...
Across the web and mobile applications, recommender systems are relied upon to surface the right ite...
In contrast to traditional recommender systems which usually pay attention to users' general and lon...
Sequential recommendations have made great strides in accurately predicting the future behavior of u...
Session-based Recommender Systems (SRSs), which aim to recommend users’ next action based on their c...
Recent years have witnessed the growth of recommender systems, with the help of deep learning techni...
Recommender systems aim to capture the interests of users in order to provide them with tailored rec...
In recent years, recommender systems have become a popular topic in research and many applications h...
Recommender systems use data on past user preferences to predict possible future likes and interests...
The capability of extracting sequential patterns from the user-item interaction data is now becoming...
Diversity has been identified as one of the key dimensions of recommendation utility that should be ...
A user of a recommender system is more likely to be satisfied by one or more of the recommendations ...
Sequential recommendations have made great strides in accurately predicting the future behavior of u...
Many modern sequential recommender systems use deep neural networks, which can effectively estimate ...
Many modern sequential recommender systems use deep neural networks, which can effectively estimate ...
Recent years witness the success of pre-trained models to alleviate the data sparsity problem in rec...
Across the web and mobile applications, recommender systems are relied upon to surface the right ite...
In contrast to traditional recommender systems which usually pay attention to users' general and lon...
Sequential recommendations have made great strides in accurately predicting the future behavior of u...
Session-based Recommender Systems (SRSs), which aim to recommend users’ next action based on their c...
Recent years have witnessed the growth of recommender systems, with the help of deep learning techni...
Recommender systems aim to capture the interests of users in order to provide them with tailored rec...
In recent years, recommender systems have become a popular topic in research and many applications h...
Recommender systems use data on past user preferences to predict possible future likes and interests...