SLF4SS: Facilitating Flexible Services Selection

In this paper, we present SLF4SS, a self-learning framework for services selection. The main features of SLF4SS include (1) learning from previous match samples to help users discover more appropriate services, (2) using multi-dimensional properties to represent services for evaluation and selection, (3) optimizing the overall property of composite service appropriate to customer's constraints and preferences, and (4) addressing users uncertain, vague requests. SLF4SS can simplify selection of suitable Web services in building high level services for various business applications, reduce implementation cost, and shorten the time of deploying enterprises applications based on SOA

[1]  Takahiro Kawamura,et al.  Semantic Matching of Web Services Capabilities , 2002, SEMWEB.

[2]  Joshua Zhexue Huang,et al.  Web services: problems and future directions , 2004, J. Web Semant..

[3]  Ian Horrocks,et al.  A software framework for matchmaking based on semantic web technology , 2003, WWW '03.

[4]  Thomas G. Dietterich What is machine learning? , 2020, Archives of Disease in Childhood.

[5]  Miroslaw Malek,et al.  Current solutions for Web service composition , 2004, IEEE Internet Computing.

[6]  Xun Xu,et al.  MDF4SS: A Multi-Dimensional Framework for Services Selection , 2005, International Conference on Next Generation Web Services Practices (NWeSP'05).