Artículo
Merging existential rules programs in multi-agent contexts through credibility accrual
Deagustini, Cristhian Ariel David
; Teze, Juan Carlos Lionel
; Martinez, Maria Vanina
; Falappa, Marcelo Alejandro
; Simari, Guillermo Ricardo
Fecha de publicación:
11/2020
Editorial:
Elsevier Science Inc.
Revista:
Information Sciences
ISSN:
0020-0255
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Merging operators represent a significant tool to extract a consistent and informative view from a set of agents. The consideration of practical scenarios where some agents can be more credible than others has contributed to substantially increase the interest in developing systems working with trust models. In this context, we propose an approach to the problem of merging knowledge in a multiagent scenario where every agent assigns to other agents a value reflecting its perception on how credible each agent is. The focus of this paper is the introduction of an operator for merging Datalog± ontologies considering agents’ credibility. We present a procedure to enhance a conflict resolution strategy by exploiting the credibility attached to a set of formulas; the approach is based on accrual functions that calculate the value of formulas according to the credibility of the agents that inform them. We show how our new operator can obtain the best-valued knowledge base among consistent bases available, according to the credibilities attached to the sources.
Palabras clave:
BELIEF ACCRUAL
,
BELIEF REVISION
,
MULTI-AGENT SYSTEMS
,
ONTOLOGIES MERGING
,
TRUST
Archivos asociados
Licencia
Identificadores
Colecciones
Articulos(ICC)
Articulos de INSTITUTO DE INVESTIGACION EN CIENCIAS DE LA COMPUTACION
Articulos de INSTITUTO DE INVESTIGACION EN CIENCIAS DE LA COMPUTACION
Citación
Deagustini, Cristhian Ariel David; Teze, Juan Carlos Lionel; Martinez, Maria Vanina; Falappa, Marcelo Alejandro; Simari, Guillermo Ricardo; Merging existential rules programs in multi-agent contexts through credibility accrual; Elsevier Science Inc.; Information Sciences; 555; 11-2020; 236-259
Compartir
Altmétricas