To achieve the personalisation recommendation, modem recommendation models should consider the user\u27s preference for item attributes and dynamic changes in preferences. 1RS has attracted attention to dealing with dynamic user preferences. However, current 1RS models share a common issue of sparse user-interaction data for training an effective recommendation policy. In this paper, we propose a knowledge graph-based interactive recommender system (KGIRS) to improve the recommendation by considering the users\u27 dynamic preference for item attributes\u27 weight. This interactive recommender system incorporates the knowledge graph as the source of the auxiliary information to increase the user-item interaction data efficiency and utilises ...
A dialog-based interactive recommendation task is where users can express natural-language feedback ...
Traditional recommender systems, such as collaborative filtering, content-�based filtering, and hy�b...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
Abstract User preference information plays an important role in knowledge graph-based recommender sy...
In recent years, attention has been paid to knowledge graph as auxiliary information to enhance reco...
The first part of this thesis concludes with an overall summary of the publications so far on the re...
The interactive recommendation aims to accommodate and learn from dynamic interactions between items...
Abstract Online recommendation systems process large amounts of information to make personalized rec...
Recommender systems are devoted to find and automatically recommend valuable information and service...
ABSTRACT: Interactive information systems are often designed on the basis of little knowledge about ...
Recommender Systems play a significant part in filtering and efficiently prioritizing relevant infor...
In session-based or sequential recommendation, it is important to consider a number of factors like ...
Numerous Knowledge Graphs (KGs) are being created to make Recommender Systems (RSs) not only intelli...
Translational models have proven to be accurate and efficient at learning entity and relation repres...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
A dialog-based interactive recommendation task is where users can express natural-language feedback ...
Traditional recommender systems, such as collaborative filtering, content-�based filtering, and hy�b...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
Abstract User preference information plays an important role in knowledge graph-based recommender sy...
In recent years, attention has been paid to knowledge graph as auxiliary information to enhance reco...
The first part of this thesis concludes with an overall summary of the publications so far on the re...
The interactive recommendation aims to accommodate and learn from dynamic interactions between items...
Abstract Online recommendation systems process large amounts of information to make personalized rec...
Recommender systems are devoted to find and automatically recommend valuable information and service...
ABSTRACT: Interactive information systems are often designed on the basis of little knowledge about ...
Recommender Systems play a significant part in filtering and efficiently prioritizing relevant infor...
In session-based or sequential recommendation, it is important to consider a number of factors like ...
Numerous Knowledge Graphs (KGs) are being created to make Recommender Systems (RSs) not only intelli...
Translational models have proven to be accurate and efficient at learning entity and relation repres...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
A dialog-based interactive recommendation task is where users can express natural-language feedback ...
Traditional recommender systems, such as collaborative filtering, content-�based filtering, and hy�b...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...