To solve the problem that recommendation algorithms based on knowledge graph ignore the information of the entity itself and the user information during information aggregating, we propose a double interaction graph neural network recommendation algorithm based on knowledge graph. First, items in the dataset are selected as user-related items and then they are integrated into user features, which are enriched. Then, according to different user relationship weights and the influence weights of neighbor entities on the central entity, the graph neural network is used to integrate the features of nodes in the knowledge graph to obtain neighborhood information. Secondly, user features are interacted and aggregated with the entity’s own informat...
Abstract User preference information plays an important role in knowledge graph-based recommender sy...
This paper proposes a novel graph neural network recommendation method to alleviate the user cold-st...
A knowledge graph is introduced into the personalized recommendation algorithm due to its strong abi...
In recent years, attention has been paid to knowledge graph as auxiliary information to enhance reco...
Nowadays, personalized recommendation based on knowledge graphs has become a hot spot for researcher...
Existing neural collaborative filtering (NCF) recommendation methods suffer from severe sparsity pro...
The existing knowledge graph embedding (KGE) method has achieved good performance in recommendation ...
Knowledge Graph (KG), which commonly consists of fruitful connected facts about items, presents an u...
Knowledge-enhanced recommendation (KER) aims to integrate the knowledge graph (KG) into collaborativ...
With the continuous application and development of big data and algorithm technology, intelligent re...
The interaction history between users and items is usually stored and displayed in the form of bipar...
To alleviate the data sparsity and cold start problems for collaborative filtering in recommendation...
The existing recommendation model based on a knowledge graph simply integrates the behavior features...
As an important branch of machine learning, recommendation algorithms have attracted the attention o...
Heterogeneous information networks can naturally simulate complex objects, and they can enrich recom...
Abstract User preference information plays an important role in knowledge graph-based recommender sy...
This paper proposes a novel graph neural network recommendation method to alleviate the user cold-st...
A knowledge graph is introduced into the personalized recommendation algorithm due to its strong abi...
In recent years, attention has been paid to knowledge graph as auxiliary information to enhance reco...
Nowadays, personalized recommendation based on knowledge graphs has become a hot spot for researcher...
Existing neural collaborative filtering (NCF) recommendation methods suffer from severe sparsity pro...
The existing knowledge graph embedding (KGE) method has achieved good performance in recommendation ...
Knowledge Graph (KG), which commonly consists of fruitful connected facts about items, presents an u...
Knowledge-enhanced recommendation (KER) aims to integrate the knowledge graph (KG) into collaborativ...
With the continuous application and development of big data and algorithm technology, intelligent re...
The interaction history between users and items is usually stored and displayed in the form of bipar...
To alleviate the data sparsity and cold start problems for collaborative filtering in recommendation...
The existing recommendation model based on a knowledge graph simply integrates the behavior features...
As an important branch of machine learning, recommendation algorithms have attracted the attention o...
Heterogeneous information networks can naturally simulate complex objects, and they can enrich recom...
Abstract User preference information plays an important role in knowledge graph-based recommender sy...
This paper proposes a novel graph neural network recommendation method to alleviate the user cold-st...
A knowledge graph is introduced into the personalized recommendation algorithm due to its strong abi...