Title :
A knowledge-based methodology for tuning analytical models
Author :
Freedman, R.S. ; Stuzin, G.J.
Author_Institution :
Dept. of Comput. Sci., Polytech. Univ., Brooklyn, NY, USA
Abstract :
A description is presented of a methodology, called knowledge-based tuning, that allows a human analyst and a knowledge-based system to collaborate in adjusting an analytic model. Such a methodology makes the model more acceptable to a decision-maker, and offers the potential for making better decisions than either an analyst or a model can make alone. In knowledge-base tuning, subjective judgments about missing factors are specified by the analyst in terms of linguistic variables. These linguistic variables and knowledge of the model error history are used by the tuning system to infer a specific model adjustment. A logic programming system was developed that illustrates the tuning methodology for a macroeconometric forecasting model. It empirically demonstrates how the predictability of the model can be improved
Keywords :
computer aided analysis; knowledge based systems; logic programming; analytical model tuning; knowledge-based methodology; logic programming system; macroeconometric forecasting model; Analytical models; Decision making; Economic forecasting; Finance; History; Humans; Logic programming; Macroeconomics; Predictive models; Statistical analysis;
Journal_Title :
Systems, Man and Cybernetics, IEEE Transactions on