APSEC 2023
Mon 4 - Thu 7 December 2023 Seoul, South Korea
Tue 5 Dec 2023 14:00 - 14:30 at Grand Hall 4 - AI and Software Engineering (2) Chair(s): Shin Yoo

With the rapid growth of cloud services driven by advancements in web service technology, selecting a high-quality service from a wide range of options has become a complex task. This study aims to address the challenges of data sparsity and the cold-start problem in web service recommendation using Quality of Service (QoS). We propose a novel approach called QoS-aware graph contrastive learning (QAGCL) for web service recommendation. Our model harnesses the power of graph contrastive learning to handle cold-start problems and improve recommendation accuracy effectively. By constructing contextually augmented graphs with geolocation information and randomness, our model provides diverse views. Through the use of graph convolutional networks and graph contrastive learning techniques, we learn user and service embeddings from these augmented graphs. The learned embeddings are then utilized to seamlessly integrate QoS considerations into the recommendation process. Experimental results demonstrate the superiority of our QAGCL model over several existing models, highlighting its effectiveness in addressing data sparsity and the cold-start problem in QoS-aware service recommendations. Our research contributes to the potential for more accurate recommendations in real-world scenarios, even with limited user-service interaction data.

Tue 5 Dec

Displayed time zone: Seoul change

14:00 - 15:30
14:00
30m
Talk
QoS-Aware Graph Contrastive Learning for Web Service Recommendation
Technical Track
Jeongwhan Choi Yonsei University, Duksan Ryu Jeonbuk National University
14:30
20m
Talk
A Decision Tree of Bioengineering Study and Career Path for Educational Guidance
EDU - Software Engineering Education
Wantana Areeprayolkij Chiang Mai University, Mengzhen Li Chiang Mai University
14:50
20m
Talk
A Machine Learning Based Approach to Detect Machine Learning Design Patterns
ERA - Early Research Achievements
Weitao Pan Waseda University, Hironori Washizaki Waseda University, Nobukazu Yoshioka Waseda University, Japan, Yoshiaki Fukazawa Waseda University, Foutse Khomh Polytechnique Montréal, Yann-Gaël Guéhéneuc Concordia University and Polytechnique Montréal
15:10
20m
Talk
Investigating Multi- and Many-Objective Search for Stability-Aware Configuration of an Autonomous Delivery System
SEIP - Software Engineering in Practice
Thomas Laurent JSPS@National Institute of Informatics, Japan, Paolo Arcaini National Institute of Informatics , Fuyuki Ishikawa National Institute of Informatics, Hirokazu Kawamoto Panasonic Holdings Corporation, Kaoru Sawai Panasonic System Networks R&D Lab. Co., Ltd., Eiichi Muramoto Panasonic Holdings Corporation