Theoretical Model of Software Cognitive Agent Testing
Exact and Engineering Sciences
DOI:
https://doi.org/10.25746/ruiips.v10.i3.29121Keywords:
Artificial intelligence, Software agents, Tests ModelAbstract
The software technology agents are suffering significant development in the scope of the Artificial Intelligence (AI) with a relevant progress on theoretical reasons area and practical experimentation. Nevertheless, an area that has become neglected is a “test” area; despite many researchers report in their studies the need of advances on this area. This paper has with objective contribute in the filling of this gap, presenting an approach “based on models tests”. For such, a Theoretical model designated ANCD was developed composed by 4 phases (environment, necessity, behavior and performance). A specific contribution of this research is a general test model presentation for an intelligent software from which are triggered and several theories were proposed (test techniques theory, decision table theory, test case generation theory).
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Copyright (c) 2022 Luís Roberto da Silva Olumene

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