PERCEIVED INFORMATION STRUCTURE: IMPLICATIONS FOR DECISION SUPPORT SYSTEM DESIGN

ABSTRACT Top‐level decision making in business organizations is characterized by high degrees of uncertainty, incomplete information, and conflicting objectives. To support top‐level decision making effectively, decision support systems (DSSs) have been proposed. Information supplied by a DSS must b...

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Veröffentlicht in:Decision sciences 1982-01, Vol.13 (1), p.38-59
1. Verfasser: Watkins, Paul R.
Format: Artikel
Sprache:eng
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Zusammenfassung:ABSTRACT Top‐level decision making in business organizations is characterized by high degrees of uncertainty, incomplete information, and conflicting objectives. To support top‐level decision making effectively, decision support systems (DSSs) have been proposed. Information supplied by a DSS must be selective in that not all possible information sets may be feasibly or economically represented in the data base. This study suggests that discovery of perceptual complexity (dimensionality) of information items, and the subsequent categorization of decision makers having the same perceptions of those information items, is a first step in the ultimate design of an effective DSS. Through the use of multidimensional scaling in a field setting, this study shows the feasibility of creating relatively homogeneous groups of decision makers according to the content and number of dimensions associated with various information items. Further results of the research suggest that information can be tailored to classes of users, which has cost‐benefit implications as well as the potential to improve the quality of the resultant decisions.
ISSN:0011-7315
1540-5915
DOI:10.1111/j.1540-5915.1982.tb00128.x