Efficient Organization of Collective Data-Processing

Jacek Cukrowski, Manfred M. Fischer

    Publication: Working/Discussion PaperWU Working Paper

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    Abstract

    The paper examines the application of the concept of economic efficiency to
    organizational issues of collective information processing in decision making. Information
    processing is modeled in the framework of the dynamic parallel-processing model of
    associative computation with an endogenous set-up cost of the processors. The model is
    extended to include the specific features of collective information processing in the team of
    decision makers which could cause an error in data analysis. In such a model, the conditions
    for efficient organization of information processing are defined and the architecture of the
    efficient structures is considered. We show that specific features of collective decision
    making procedures require a broader framework for judging organizational efficiency
    than has traditionally been adopted. In particular, and contrary to the results presented in
    economic literature, we show that in human data processing (unlike in computer systems),
    there is no unique architecture for efficient information processing structures, but a number of
    various efficient forms can be observed. The results indicate that technological progress
    resulting in faster data processing (ceteris paribus) will lead to more regular information
    processing structures. However, if the relative cost of the delay in data analysis increases
    significantly, less regular structures could be efficient. (authors' abstract)
    Original languageEnglish
    Place of PublicationVienna
    PublisherWU Vienna University of Economics and Business
    DOIs
    Publication statusPublished - 1 Nov 1998

    Publication series

    SeriesDiscussion Papers of the Institute for Economic Geography and GIScience
    Number64/98

    WU Working Paper Series

    • Discussion Papers of the Institute for Economic Geography and GIScience

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