Robust automated knowledge capture. | |
Stevens-Adams, Susan Marie ; Abbott, Robert G. ; Forsythe, James Chris ; Trumbo, Michael Christopher Stefan ; Haass, Michael Joseph ; Hendrickson, Stacey M. Langfitt | |
关键词: AUTOMATION; DECISION MAKING; HUMAN FACTORS; KNOWLEDGE BASE; NATIONAL SECURITY; SIMULATION; VALIDATION; | |
DOI : 10.2172/1031882 RP-ID : SAND2011-8448 PID : OSTI ID: 1031882 Others : TRN: US201202%%64 |
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美国|英语 | |
来源: SciTech Connect | |
【 摘 要 】
This report summarizes research conducted through the Sandia National Laboratories Robust Automated Knowledge Capture Laboratory Directed Research and Development project. The objective of this project was to advance scientific understanding of the influence of individual cognitive attributes on decision making. The project has developed a quantitative model known as RumRunner that has proven effective in predicting the propensity of an individual to shift strategies on the basis of task and experience related parameters. Three separate studies are described which have validated the basic RumRunner model. This work provides a basis for better understanding human decision making in high consequent national security applications, and in particular, the individual characteristics that underlie adaptive thinking.
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RO201704210000838LZ | 1354KB | download |