Title :
Computational Quantification of Trust Updates
Author_Institution :
Sch. of Comput. Sci. & Eng., UNSW, Sydney, NSW
Abstract :
A computational model for expressions of trust values is outlined. It is based on the proposal by Jonker and Treur to base trust updates on reported experiences. The model handles arbitrary sequences of experience inputs; its such updates are fully commutative and associative. It satisfies all the axiomatic properties suggested for the trust values. Trust is interpreted as family of probabilistic beliefs on the space of possible experience reports. Expansion of the space of reports gives rise to inverse conditioning of probability distributions and thus of trust values. Belief and trust changes follow the AGM structure. Inverse conditioning is put into effect through a suitable application of maximum entropy principles
Keywords :
belief maintenance; maximum entropy methods; statistical distributions; AGM belief revision; axiomatic properties; computational quantification; inverse conditioning; maximum entropy principle; probabilistic beliefs; probability distribution; probability revision; trust experience; trust updates; trust updating; Artificial intelligence; Australia; Computational modeling; Computer science; Data mining; Entropy; Ethics; Insurance; Probability distribution; Proposals; AGM belief revision; Trust updating; inverse conditioning.; probability revision; trust experience;
Conference_Titel :
Integrating AI and Data Mining, 2006. AIDM '06. International Workshop on
Conference_Location :
Hobart, Tas.
Print_ISBN :
0-7695-2730-2
DOI :
10.1109/AIDM.2006.3