Title :
Deciding under partial ignorance
Author :
Voorbraak, Frans
Author_Institution :
Dept. of Math. & Comput. Sci., Amsterdam Univ., Netherlands
Abstract :
We study the problem of making decisions under partial ignorance, or partially quantified uncertainty. This problem arises in many applications in robotics and AI, and it has not yet got the attention it deserves. The traditional decision rules of decision under risk and under strict uncertainty (or complete ignorance) can naturally be extended to the more general case of decision under partial ignorance. We propose partial probability theory (PPT) for representing partial ignorance, and we discuss the extension to PPT of expected utility maximization. We argue that decision analysis should not be exclusively focused on optimizing but pay more serious attention to finding satisfactory actions, and to reasoning with assumptions. The extended minimax regret decision rule appears to be an important rule for satisficing
Keywords :
decision theory; probability; uncertainty handling; AI; decision-making; expected utility maximization; extended minimax regret decision rule; partial ignorance; partial probability theory; partially quantified uncertainty; robotics; satisficing; Application software; Artificial intelligence; Bayesian methods; Computer science; Information analysis; Mathematics; Robots; TV; Uncertainty; Utility theory;
Conference_Titel :
Advanced Mobile Robots, 1997. Proceedings., Second EUROMICRO workshop on
Conference_Location :
Brescia
Print_ISBN :
0-8186-8174-8
DOI :
10.1109/EURBOT.1997.633576