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Decision Support Systems and Representation Levels in the Decision Spine

Decision Support Systems and Representation Levels in the Decision Spine
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Author(s): Patrick Humphreys (London School of Economics and Political Science, UK)
Copyright: 2008
Pages: 7
Source title: Encyclopedia of Decision Making and Decision Support Technologies
Source Author(s)/Editor(s): Frederic Adam (University College Cork, Ireland)and Patrick Humphreys (London School of Economics, UK)
DOI: 10.4018/978-1-59904-843-7.ch026

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Abstract

Problem solving has been defined as the complex interplay of cognitive, affective, and behavioural processes with the aim to adapt to external or internal demands or challenges (Heppner & Krauskopf, 1987). In the realm of organizational decision-making, Herbert Simon (1977) describes the problem-solving process as moving through three stages: intelligence, design, and choice. In this context, design focuses on “inventing, developing and analysing possible courses of action,” where the design artefact being constructed for this purpose constitutes the “representation of the problem.” While a wide range of representation means and calculi have been proposed for decision problem solving purposes, practical implementations generally involve applying one or more of these means to develop the structure of the problem within one or more frames. Typically, these are future-scenario frames, multiattributed preference frames, and rule base-frames (Chatjoulis & Humphreys, 2007). Simon (1977) characterized decision problems according to the degree of problem-structure that was pre-established (or taken for granted as “received wisdom,” or “the truth about the situation that calls for a decision”) at the time participants embark on the decision problem solving process. He placed such problems on a continuum ranging from routine (programmed, structured) problems with wellspecified solutions to novel, complex (unprogrammed, unstructured) with ambiguous solutions.

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