CHAMPION: Intelligent Hierarchical Reasoning Agents for Enhanced Decision Support
نویسندگان
چکیده
We describe the design and development of an advanced reasoning framework employing semantic technologies, organized within a hierarchy of computational reasoning agents that interpret domain specific information. The CHAMPION reasoning framework is designed based on an inspirational metaphor of the pattern recognition functions performed by the human neocortex. The framework represents a new computational modeling approach that derives invariant knowledge representations through memoryprediction belief propagation processes that are driven by formal ontological language specification and semantic technologies. The CHAMPION framework shows promise for enhancing complex decision making in diverse problem domains including cyber security, nonproliferation and energy consumption analysis.
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