How incorporating feedback mechanisms in a DSS affects DSS evaluations

Ujwal Kayande*, Arnaud De Bruyn, Gary L. Lilien, Arvind Rangaswamy, Gerrit H. van Bruggen

*Corresponding author for this work

    Research output: Contribution to journalArticlepeer-review

    94 Citations (Scopus)

    Abstract

    Model-based decision support systems (DSS) improve performance in many contexts that are data-rich, uncertain, and require repetitive decisions. But such DSS are often not designed to help users understand and internalize the underlying factors driving DSS recommendations. Users then feel uncertain about DSS recommendations, leading them to possibly avoid using the system. We argue that a DSS must be designed to induce an alignment of a decision maker's mental model with the decision model embedded in the DSS. Such an alignment requires effort from the decision maker and guidance from the DSS. We experimentally evaluate two DSS design characteristics that facilitate such alignment: (i) feedback on the upside potential for performance improvement and (ii) feedback on corrective actions to improve decisions. We show that, in tandem, these two types of DSS feedback induce decision makers to align their mental models with the decision model, a process we call deep learning, whereas individually these two types of feedback have little effect on deep learning. We also show that deep learning, in turn, improves user evaluations of the DSS. We discuss how our findings could lead to DSS design improvements and better returns on DSS investments.

    Original languageEnglish
    Pages (from-to)527-546
    Number of pages20
    JournalInformation Systems Research
    Volume20
    Issue number4
    DOIs
    Publication statusPublished - Dec 2009

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