Title :
Composing Data Services with Uncertain Semantics
Author :
Malki, Abdelhamid ; Barhamgi, Mahmoud ; Benslimane, Sidi-Mohamed ; Malki, Mimoun
Author_Institution :
LIRIS Lab., France
Abstract :
With the emergence of the open data movement, hundreds of thousands of datasets from various concerns are now freely available on the Internet. The access to a good number of these datasets is carried out through Web services which provide a standard way to interact with data. In this context, user´s queries often require the composition of multiple data Web services to be answered. Defining the semantics of data services is the first step towards automating their composition. An interesting approach to define the semantics of data services is by describing them as semantic views over a domain ontology. However, defining such semantic views cannot always be done with certainty, especially when the service´s outputs are too complex. In this paper, we propose a probabilistic approach to model the semantics uncertainty of data services. In our approach, a data service with an uncertain semantics is described by several possible semantic views, each one is associated with a probability. Services along with their possible semantic views are represented in a Block-Independent-Disjoint (noted BID) probabilistic service registry, and interpreted based on the Possible Worlds Semantics. Based on our modeling, we study the problem of interpreting an existing composition involving services with uncertain semantics. We also study the problem of compositing uncertain data services to answer a user query, and propose an efficient method to compute the different possible compositions and their probabilities.
Keywords :
Web services; ontologies (artificial intelligence); query processing; statistical analysis; Internet; Web services; block-independent-disjoint probabilistic service registry; data interaction; data service composition; data service semantics; domain ontology; noted BID probabilistic service registry; open data movement; possible worlds semantics; probabilistic approach; user query; Cellular phones; Data models; Educational institutions; Ontologies; Probabilistic logic; Semantics; Uncertainty; Open data; data services; semantic views; uncertainty;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2014.2359661