An adaptively emerging mechanism for context-aware service selections regulated by feedback distributions

BackgroundIn the cloud computing environments, numerous ambient services may be created speedily and provided to a variety of users. In such a situation, people may be annoyed by how to make a proper and optimal selection quickly and economically.MethodsIn this study, we propose an Adaptively Emerging Mechanism (AEM) to reduce this selection burden with an interdisciplinary approach. AEM is applied and integrated into the Flowable Service Model (FSM), which has been proposed and developed in our previous study. We consider the user’s feedback information is a pivotal factor for AEM, which contains the user’s satisfaction degree after using the services. At the same time, we assume that these factors, such as the service cost, matching result precision, responding time, personal and social context information, etc., are essential parts of the optimizing process for the selection of ambient services.Results and ConclusionBy analyzing the result of AEM simulation, we reveal that AEM can (1) substantially improve the selection process for LOW feedback users; (2) bring no negative effect on the selection process for MEDIUM or HIGH feedback users; and (3) enhance the rationality for services selection.

[1]  Lihi Zelnik-Manor,et al.  Viewpoint Selection for Human Actions , 2012, International Journal of Computer Vision.

[2]  Athman Bouguettaya,et al.  Multi-attribute optimization in service selection , 2011, World Wide Web.

[3]  桐山 伸也 "The Emotion Machine: Commonsense Thinking, Artificial Intelligence, and the Future of the Human Mind," Marvin Minsky, Simon & Schuster, 2006(私のすすめるこの一冊,コーヒーブレイク) , 2007 .

[4]  Klara Nahrstedt,et al.  Distributed multimedia service composition with statistical QoS assurances , 2006, IEEE Transactions on Multimedia.

[5]  Evgeny Pyshkin,et al.  How to improve the search quality for various types of information , 2011 .

[6]  M. Minsky The Emotion Machine: Commonsense Thinking, Artificial Intelligence, and the Future of the Human Mind , 2006 .

[7]  Jianhua Ma,et al.  A flowable service model for seamless integration of services , 2009 .

[8]  Kuei-Fang Hsiao,et al.  Integrating body language movements in augmented reality learning environment , 2011, Human-centric Computing and Information Sciences.

[9]  Ohad Shamir,et al.  Stability and model selection in k-means clustering , 2010, Machine Learning.

[10]  Ian T. Foster Service-Oriented Science: Scaling eScience Impact , 2006, 2006 IEEE/WIC/ACM International Conference on Web Intelligence (WI 2006 Main Conference Proceedings)(WI'06).

[11]  Qun Jin,et al.  Harnessing User Contexts to Enable Flowable Services Model , 2010, 2010 3rd International Conference on Human-Centric Computing.

[12]  Danilo Ardagna,et al.  Adaptive Service Composition in Flexible Processes , 2007, IEEE Transactions on Software Engineering.

[13]  Dimitris Sacharidis,et al.  Ranking and Clustering Web Services Using Multicriteria Dominance Relationships , 2010, IEEE Transactions on Services Computing.

[14]  Maude Manouvrier,et al.  TQoS: Transactional and QoS-Aware Selection Algorithm for Automatic Web Service Composition , 2010, IEEE Transactions on Services Computing.

[15]  Qun Jin,et al.  Provision of Flowable Services in Cloud Computing Environments , 2010, 2010 5th International Conference on Future Information Technology.

[16]  Shangguang Wang,et al.  Reputation measure approach of web service for service selection , 2011, IET Softw..

[17]  Martin Hilbert,et al.  The World’s Technological Capacity to Store, Communicate, and Compute Information , 2011, Science.

[18]  Ee-Peng Lim,et al.  Dynamic Web Service Selection for Reliable Web Service Composition , 2008, IEEE Transactions on Services Computing.

[19]  Chang Wook Ahn,et al.  A diversity preserving selection in multiobjective evolutionary algorithms , 2010, Applied Intelligence.

[20]  José Francisco Martínez Trinidad,et al.  A new fast prototype selection method based on clustering , 2010, Pattern Analysis and Applications.

[21]  Chen Ding,et al.  User-centered design of a QoS-based web service selection system , 2011, Service Oriented Computing and Applications.

[22]  Patricia Lago,et al.  Guiding the selection of service-oriented software engineering methodologies , 2011, Service Oriented Computing and Applications.

[23]  Jian Ma,et al.  Reliable and efficient service composition based on smart objects’ state information , 2010, J. Ambient Intell. Humaniz. Comput..

[24]  Zakaria Maamar,et al.  Using Social Networks for Web Services Discovery , 2011, IEEE Internet Computing.

[25]  Qun Jin,et al.  A human-centric integrated approach to web information search and sharing , 2011, Human-centric Computing and Information Sciences.