Context-Aware Semantic Web Service Discovery through Metric-based Situation Representations

Stefan Dietze 1 Michael Mrissa 2 John Domingue 1 Alessio Gugliotta 1
2 SOC - Service Oriented Computing
LIRIS - Laboratoire d'InfoRmatique en Image et Systèmes d'information
Abstract : Semantic Web Services (SWS) enable the automatic discovery of distributed Web services based on comprehensive semantic representations. However, although SWS technology supports the automatic allocation of Web services for a given well-defined task, it does not entail their discovery according to a given situational context. Whereas tasks are highly dependent on the situational context in which they occur, SWS technology does not explicitly encourage the representation of domain situations. Moreover, describing the complex notion of a specific situation in all its facets is a costly task and may never reach sufficient semantic expressiveness. Particularly, following the symbolic SWS approach leads to ambiguity issues and does not entail semantic meaningfulness. Apart from that, not any real-world situation completely equals another, but has to be matched to a finite set of semantically defined parameter descriptions to enable context-adaptability. To overcome these issues, we propose Conceptual Situation Spaces (CSS) which are aligned to established SWS standards. CSS enable the description of situation characteristics as members in geometrical vector spaces following the idea of Conceptual Spaces. Semantic similarity between situations is calculated in terms of their Euclidean distance within a CSS. Extending merely symbolic SWS descriptions with context information through CSS enables similarity-based matchmaking between real-world situation characteristics and predefined resource representations as part of SWS descriptions. To prove its feasibility, we apply our approach to the E-Learning and E-Business domains and provide a proof-of-concept prototype.
Document type :
Book sections
Complete list of metadatas

https://hal.archives-ouvertes.fr/hal-01381486
Contributor : Équipe Gestionnaire Des Publications Si Liris <>
Submitted on : Friday, October 14, 2016 - 2:46:45 PM
Last modification on : Friday, April 26, 2019 - 11:16:01 PM

Identifiers

  • HAL Id : hal-01381486, version 1

Citation

Stefan Dietze, Michael Mrissa, John Domingue, Alessio Gugliotta. Context-Aware Semantic Web Service Discovery through Metric-based Situation Representations. Quan Z. Sheng, Jian Yu, Schahram Dustdar. Enabling Context-Aware Web Services: Methods, Architectures, and Technologies, Chapman & Hall / CRC Press, pp.365-391, 2010. ⟨hal-01381486⟩

Share

Metrics

Record views

139