AIGNMay 26, 2013

Semi-bounded Rationality: A model for decision making

arXiv:1305.6037v17 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental extension of bounded rationality theory for decision-making in AI and human contexts.

The paper tackles the problem of decision-making under imperfect and incomplete information by proposing semi-bounded rationality as an extension of bounded rationality, using signal processing and AI to filter noise and improve consistency.

In this paper the theory of semi-bounded rationality is proposed as an extension of the theory of bounded rationality. In particular, it is proposed that a decision making process involves two components and these are the correlation machine, which estimates missing values, and the causal machine, which relates the cause to the effect. Rational decision making involves using information which is almost always imperfect and incomplete as well as some intelligent machine which if it is a human being is inconsistent to make decisions. In the theory of bounded rationality this decision is made irrespective of the fact that the information to be used is incomplete and imperfect and the human brain is inconsistent and thus this decision that is to be made is taken within the bounds of these limitations. In the theory of semi-bounded rationality, signal processing is used to filter noise and outliers in the information and the correlation machine is applied to complete the missing information and artificial intelligence is used to make more consistent decisions.

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