INTELIGENCIA ARTIFICIAL, Vol 14, No 48 (2010)

Modelling autonomic dataspaces using answer sets

Gabriela Montiel-Moreno, Genoveva Vargas-Solar, José Luis Zechinelli-Martini

Abstract


This paper presents an approach for managing an autonomic dataspace, able to automatically define views that fulfill the requirements of a set of users, and adjust them as the dataspace evolves. An autonomic dataspace deals with incomplete knowledge to manage itself because of the heterogeneity and the lack of metadata related to the resources it integrates. Our approach exploits the expressiveness of stable models and the K action language for expressing the dataspace management functions It is based on a model for specifying an autonomic dataspace expressed using answer set programming (ASP). ASP is a type of declarative logic programming particularly useful in knowledge-intensive applications. It is based on the stable semantics (answer sets), which allows negation as failure and applies the ideas of auto-epistemic logic to distinguish between what is true and what is believed.

Full Text: PDF