Artículo
Credibility Dynamics: A belief-revision-based trust model with pairwise comparisons
Fecha de publicación:
04/2021
Editorial:
Elsevier Science
Revista:
Artificial Intelligence
ISSN:
0004-3702
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Trust models have become invaluable in dynamic scenarios, such as Internet applications, since they provide means for estimating trustworthiness of potential interaction counterparts. Currently, the majority of trust models require ratings to be expressed absolutely, that is as values from some predefined scale. However, literature shows that expressing ratings absolutely can be challenging for users and susceptible to their bias. But these issues can be tackled if instead of asking users to rate with absolute values, we ask them to express preferences between pairs of alternatives. Thus, in this paper we propose a trust model where pairwise comparisons are used as ratings and where trust is expressed as a strict partial order induced over agents. To maintain a sound ordering, the model uses a belief revision technique that prevents contradictions that may arise when adding new information. The technique uses mechanisms that reason quantitatively about the reliability of information allowing the model to time-discount ratings as well as withstand deceit. We evaluate the model in a series of experiments and compare the results against established trust models. The results show that the model quickly adapts to changes, gracefully handles deceitful, noisy and biased information, and generally achieves good accuracy.
Palabras clave:
CREDIBILITY ORDERS
,
MULTI-AGENT SYSTEM
,
REPUTATION
,
TRUST
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Articulos (ICIC)
Articulos de INSTITUTO DE CS. E INGENIERIA DE LA COMPUTACION
Articulos de INSTITUTO DE CS. E INGENIERIA DE LA COMPUTACION
Citación
Jelenc, David; Tamargo, Luciano Héctor; Gottifredi, Sebastián; García, Alejandro Javier; Credibility Dynamics: A belief-revision-based trust model with pairwise comparisons; Elsevier Science; Artificial Intelligence; 293; 4-2021; 1-24
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