Back to Search Start Over

Weighted principal component analysis-based service selection method for multimedia services in cloud.

Authors :
Qi, Lianyong
Dou, Wanchun
Chen, Jinjun
Source :
Computing. Jan2016, Vol. 98 Issue 1/2, p195-214. 20p.
Publication Year :
2016

Abstract

Cloud computing has rendered its ever-increasing advantages in flexible service provisions, which attracts the attentions from large-scale enterprise applications to small-scale smart uses. For example, more and more multimedia services are moving towards cloud to better accommodate people's daily uses on various smart devices that support cloud, some of which are similar or equivalent in their functionality (e.g., more than 1,000 video services that share similar 'video-play' functionality are present in APP Store). In this situation, it is necessary to discriminate these functional-equivalent multimedia services, based on their Quality of Service (QoS) information. However, due to the abundant information of multimedia content, dozens of QoS criteria are often needed to evaluate a multimedia service, which places a heavy burden on users' multimedia service selection. Besides, the QoS criteria of multimedia services are usually not independent, but correlated, which cannot be accommodated very well by the traditional selection methods, e.g., traditional simple weighting methods. In view of these challenges, we put forward a multimedia service selection method based on weighted Principal Component Analysis (PCA), i.e., Weighted PCA-based Multimedia Service Selection Method (W_PCA_MSSM). The advantage of our proposal is two-fold. First, weighted PCA could reduce the number of QoS criteria for evaluation, by which the service selection process is simplified. Second, PCA could eliminate the correlations between different QoS criteria, which may bring a more accurate service selection result. Finally, the feasibility of W_PCA_MSSM is validated, by a set of experiments deployed on real-world service quality set QWS Dataset. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
0010485X
Volume :
98
Issue :
1/2
Database :
Academic Search Index
Journal :
Computing
Publication Type :
Academic Journal
Accession number :
112131528
Full Text :
https://doi.org/10.1007/s00607-014-0413-x