Title
Robot recommender system using affection-based episode ontology for personalization
Abstract
This paper proposes a robot recommender system, which uses a hybrid filtering method based on n-gram affective event model. Nowadays there are strong tendency to utilize a robot for educational services, which can provide educational contents to enhances individual student's motivation. However, the current service robots can be more holistic systems to offer personalized robotic services to satisfy every individuals by reflecting their preferences. Here, robotic service can be another field to meet personal need. Hybrid approaches of personalization technology that combine collaborative filtering approaches and content-based approaches are proposed over the last decade. Especially, n-gram based approaches are proposed to utilize sequential information from very large data sets. This paper suggests an extends affective event model and its n-gram model combining fact semantic knowledge, event episodic knowledge and emotion. To show the validity of the proposed approach, we applied the scenario of English learning. The experiment results shows that an educational service robot recommend two students as different content types, even though they miss same question.
Year
DOI
Venue
2013
10.1109/ROMAN.2013.6628437
RO-MAN
Keywords
Field
DocType
event episodic knowledge,english learning,semantic knowledge,educational service robot,collaborative filtering,n-gram affective event model,content-based approach,educational services,recommender systems,service robots,collaborative filtering approach,personalized robotic services,educational contents,affection-based episode ontology,robot recommender system,hybrid filtering method,educational robots
Ontology,Computer science,Human–computer interaction,Artificial intelligence,Personalization,Semantic memory,Recommender system,Computer vision,Collaborative filtering,Robot,Educational robotics,Multimedia,Service robot
Conference
ISSN
Citations 
PageRank 
1944-9445
4
0.42
References 
Authors
21
5
Name
Order
Citations
PageRank
Gi Hyun Lim116217.33
Seung-Woo Hong2324.38
Inhee Lee327533.89
Il Hong Suh4780110.60
Michael Beetz53784284.03