University of Cape Town
Browse

Distinguishability analysis for assessing larger groups of expert data: the case of larger groups of 'average' experts

Download (95.92 kB)
dataset
posted on 2023-06-13, 06:34 authored by Helene-Marie StanderHelene-Marie Stander, Susan T L HarrisonSusan T L Harrison, Jennifer L Broadhurst

The purpose of this data file is to consider whether adding more minerals design experts to the analysis is likely to improve the distinguishability of results. It does this by considering how many hypothetical 'ideal' experts, giving exactly average ratings, would move a criterion from being indistinguishable, on average, to being distinguishable.

Funding

SARChI Chair in Minerals Beneficiation UID 64829

History

Department/Unit

University of Cape Town, Department of Chemical Engineering, Minerals to Metals Research Initiative

Usage metrics

    Faculty of Engineering and the Built Environment (EBE)

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC