Title :
A dynamic decision model of human task selection performance
Author :
Pattipati, Krishna R. ; Kleinman, David L. ; Ephrath, Arye R.
Author_Institution :
Alphatech Inc., Burlington, MA, USA
Abstract :
Human information processing and task selection procedures in a dynamic multitask supervisory control environment are discussed. The results of a joint experimental and analytic program were assimilated into a normative dynamic-decision model for predicting human task-selection performance. To this end a general multitask experimental paradigm has been developed, wherein tasks of different value, time requirement, and deadline compete for a human´s attention. Via this framework, the effects of various task related variables on human-decision processes have been studied empirically. Conceptually the normative dynamic-decision model (DDM) is an outgrowth of the well-known optimal control modeling technology as applied to multitask situations. Thus the analytic framework of the DDM is rooted in modern control, estimation, and semiMarkov decision-process theories. In order to validate the model via comparison with experimental results, several time history and scalar measures of performance similarity are proposed. Excellent model-data agreement is obtained for all the experimental conditions studied.
Keywords :
decision theory and analysis; man-machine systems; social and behavioural sciences; dynamic decision model; dynamic multitask supervisory control environment; estimation; human task selection performance; man machine systems; performance similarity; semiMarkov decision-process; Analytical models; Humans; Information processing; Monitoring; Noise; Optimal control; Process control;
Journal_Title :
Systems, Man and Cybernetics, IEEE Transactions on
DOI :
10.1109/TSMC.1983.6313109