Examining cue recognition across expertise using a computer-based task

Ben W. Morrison, Mark W. Wiggins, Nigel W. Bond, Michael D. Tyler

    Research output: Chapter in Book / Conference PaperConference Paper

    Abstract

    Motivation - The study examined whether experts and novices differed in their recognition of decisionmaking cues. Research approach - To test cue recognition, the authors developed and tested a computer-based cue recognition task on a group of expert and novice offender profilers. Findings/Design - Recognition performance was assessed in relation to cue classification agreement and recognition response latency among and between the two groups. The findings revealed superior performance on both measures by the experts compared to the novices. Research limitations/Implications - The findings have implications for the cue selection process in the design of computer-based training, and decision support systems. Originality/Value - The research offers an objective means of: 1) identifying cues; 2) gauging relative cue stability/strength; 3) comparing cue recognition across expertise; and, 4) selecting a valid cue-set for use in training and support systems. Take away message - There are significant differences in cue recognition across expertise that may, in part, differentiate decision-making performance.
    Original languageEnglish
    Title of host publicationNDM9, London 2009 : Proceedings of the 9th International Conference on Naturalistic Decision Making, 23-26 June 2009, London, U.K.
    PublisherBritish Computer Society
    Pages91-98
    Number of pages8
    ISBN (Print)9781906124151
    Publication statusPublished - 2009
    EventBi-annual International Conference on Naturalistic Decision Making (NDM9) -
    Duration: 1 Jan 2009 → …

    Conference

    ConferenceBi-annual International Conference on Naturalistic Decision Making (NDM9)
    Period1/01/09 → …

    Keywords

    • decision making
    • cue recognition

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