English

Normative design using inductive learning

Logic in Computer Science 2011-07-26 v1 Artificial Intelligence Machine Learning

Abstract

In this paper we propose a use-case-driven iterative design methodology for normative frameworks, also called virtual institutions, which are used to govern open systems. Our computational model represents the normative framework as a logic program under answer set semantics (ASP). By means of an inductive logic programming approach, implemented using ASP, it is possible to synthesise new rules and revise the existing ones. The learning mechanism is guided by the designer who describes the desired properties of the framework through use cases, comprising (i) event traces that capture possible scenarios, and (ii) a state that describes the desired outcome. The learning process then proposes additional rules, or changes to current rules, to satisfy the constraints expressed in the use cases. Thus, the contribution of this paper is a process for the elaboration and revision of a normative framework by means of a semi-automatic and iterative process driven from specifications of (un)desirable behaviour. The process integrates a novel and general methodology for theory revision based on ASP.

Keywords

Cite

@article{arxiv.1107.4967,
  title  = {Normative design using inductive learning},
  author = {Domenico Corapi and Alessandra Russo and Marina De Vos and Julian Padget and Ken Satoh},
  journal= {arXiv preprint arXiv:1107.4967},
  year   = {2011}
}

Comments

Theory and Practice of Logic Programming, 27th Int'l. Conference on Logic Programming (ICLP'11) Special Issue, volume 11, issue 4-5, 2011

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