Translational models have proven to be accurate and efficient at learning entity and relation representations from knowledge graphs for machine learning tasks such as knowledge graph completion. In the past years, knowledge graphs have shown to be beneficial for recommender systems, efficiently addressing paramount issues such as new items and data sparsity. In this paper, we show that the item recommendation problem can be seen as a specific case of knowledge graph completion problem, where the “feedback” property, which connects users to items that they like, has to be predicted. We empirically compare a set of state-of-the-art knowledge graph embeddings algorithms on the task of item recommendation on the Movielens 1M and on the LibraryT...
Existing neural collaborative filtering (NCF) recommendation methods suffer from severe sparsity pro...
With the popularity of Knowledge Graphs (KGs) in recent years, there have been many studies that le...
Graph-based recommendation methods represent an established research line in the area of recommender...
In the past years, knowledge graphs have proven to be beneficial for recommender systems, efficient...
Knowledge graphs have shown to be highly beneficial to recommender systems, providing an ideal data ...
Conversational recommender systems focus on the task of suggesting products to users based on the co...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
Both recommender systems and knowledge graphs can provide overall and detailed views on datasets, an...
Nowadays, personalized recommendation based on knowledge graphs has become a hot spot for researcher...
Both recommender systems and knowledge graphs can provide overall and detailed views on datasets, an...
Sequential recommendation algorithms aim to predict users' future behavior given their historical in...
In this paper we present a semantics-aware recommendation strategy that uses graph embedding techniq...
Recommender Systems are intelligent machine learning systems that help customers discover a ranked s...
Incorporating knowledge graph into recommender systems has attracted increasing attention in recent ...
A knowledge graph is introduced into the personalized recommendation algorithm due to its strong abi...
Existing neural collaborative filtering (NCF) recommendation methods suffer from severe sparsity pro...
With the popularity of Knowledge Graphs (KGs) in recent years, there have been many studies that le...
Graph-based recommendation methods represent an established research line in the area of recommender...
In the past years, knowledge graphs have proven to be beneficial for recommender systems, efficient...
Knowledge graphs have shown to be highly beneficial to recommender systems, providing an ideal data ...
Conversational recommender systems focus on the task of suggesting products to users based on the co...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
Both recommender systems and knowledge graphs can provide overall and detailed views on datasets, an...
Nowadays, personalized recommendation based on knowledge graphs has become a hot spot for researcher...
Both recommender systems and knowledge graphs can provide overall and detailed views on datasets, an...
Sequential recommendation algorithms aim to predict users' future behavior given their historical in...
In this paper we present a semantics-aware recommendation strategy that uses graph embedding techniq...
Recommender Systems are intelligent machine learning systems that help customers discover a ranked s...
Incorporating knowledge graph into recommender systems has attracted increasing attention in recent ...
A knowledge graph is introduced into the personalized recommendation algorithm due to its strong abi...
Existing neural collaborative filtering (NCF) recommendation methods suffer from severe sparsity pro...
With the popularity of Knowledge Graphs (KGs) in recent years, there have been many studies that le...
Graph-based recommendation methods represent an established research line in the area of recommender...