With the continuous application and development of big data and algorithm technology, intelligent recommendation algorithms are gradually affecting all aspects of people’s daily life. The impact of smart recommendation algorithm has both advantages and disadvantages; it can facilitate people’s life, but also exists at the same time the invasion of privacy, information cocoon, and other problems. How to optimize intelligent recommendation algorithms to serve the society more safely and efficiently becomes a problem that needs to be solved nowadays. We propose an intelligent recommendation algorithm combining recurrent neural network (RNN) and knowledge graph (KG) and analyze and demonstrate its performance by building models and experiments....
Abstract To improve the accuracy of recommendations, alleviate sparse data problems, and mitigate th...
Knowledge Graph (KG), which commonly consists of fruitful connected facts about items, presents an u...
The interaction history between users and items is usually stored and displayed in the form of bipar...
In recent years, attention has been paid to knowledge graph as auxiliary information to enhance reco...
To solve the problem that recommendation algorithms based on knowledge graph ignore the information ...
Social recommendation algorithm is a common tool for recommending interesting or potentially useful ...
Nowadays, personalized recommendation based on knowledge graphs has become a hot spot for researcher...
Now a day’s recommendation systems are becoming more popular to recommend products for the individua...
With the advent of the era of big data, data mining has become one of the key technologies in the fi...
Heterogeneous information networks can naturally simulate complex objects, and they can enrich recom...
With the development of information technologies and increase scale of digital resources, personaliz...
Abstract Online recommendation systems process large amounts of information to make personalized rec...
Knowledge-graph-aware recommendation systems have increasingly attracted attention in both industry ...
Online market places make their profit based on their advertisements or sales commission while busin...
This paper proposes a novel graph neural network recommendation method to alleviate the user cold-st...
Abstract To improve the accuracy of recommendations, alleviate sparse data problems, and mitigate th...
Knowledge Graph (KG), which commonly consists of fruitful connected facts about items, presents an u...
The interaction history between users and items is usually stored and displayed in the form of bipar...
In recent years, attention has been paid to knowledge graph as auxiliary information to enhance reco...
To solve the problem that recommendation algorithms based on knowledge graph ignore the information ...
Social recommendation algorithm is a common tool for recommending interesting or potentially useful ...
Nowadays, personalized recommendation based on knowledge graphs has become a hot spot for researcher...
Now a day’s recommendation systems are becoming more popular to recommend products for the individua...
With the advent of the era of big data, data mining has become one of the key technologies in the fi...
Heterogeneous information networks can naturally simulate complex objects, and they can enrich recom...
With the development of information technologies and increase scale of digital resources, personaliz...
Abstract Online recommendation systems process large amounts of information to make personalized rec...
Knowledge-graph-aware recommendation systems have increasingly attracted attention in both industry ...
Online market places make their profit based on their advertisements or sales commission while busin...
This paper proposes a novel graph neural network recommendation method to alleviate the user cold-st...
Abstract To improve the accuracy of recommendations, alleviate sparse data problems, and mitigate th...
Knowledge Graph (KG), which commonly consists of fruitful connected facts about items, presents an u...
The interaction history between users and items is usually stored and displayed in the form of bipar...