Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/27885
Title: Reliable uncertainties of tests and surveys – a data-driven approach
Authors: Chakrabartty, SN
Wang, K
Chakrabarty, D
Keywords: Markov chains (discrete-time Markov processes on discrete state spaces);mathematical psychology;measurement and performance;partitions of sets
Issue Date: 19-Mar-2024
Publisher: EDP Sciences
Citation: Chakrabartty, S.N., Wang, K. and Chakrabarty, D. (2024) 'Reliable uncertainties of tests and surveys – a data-driven approach', International Journal of Metrology and Quality Engineering, 15, 4,.pp. 1 - 14. doi: 10.1051/ijmqe/2023018.
Abstract: Policy decisions are often motivated by results attained by a cohort of responders to a survey or a test. However, erroneous identification of the reliability or the complimentary uncertainty of the test/survey instrument, will distort the data that such policy decisions are based upon. Thus, robust learning of the uncertainty of such an instrument is sought. This uncertainty is parametrised by the departure from reproducibility of the data comprising responses to questions of this instrument, given the responders. Such departure is best modelled using the distance between the data on responses to questions that comprise the two similar subtests that the given test/survey can be split into. The paper presents three fast and robust ways for learning the optimal-subtests that a given test/survey instrument can be spilt into, to allow for reliable uncertainty of the given instrument, where the response to a question is either binary, or categorical − taking values at multiple levels − and the test/survey instrument is realistically heterogeneous in the correlation structure of the questions (or items); prone to measuring multiple traits; and built of small to a very large number of items. Our methods work in the presence of such messiness of real tests and surveys that typically violate applicability of conventional methods. We illustrate our new methods, by computing uncertainty of three real tests and surveys that are large to very-large in size, subsequent to learning the optimal subtests.
Description: MSC Classification 60J10, 91Exx, 91E45, 05A18.
Supplementary material are available online at: https://www.metrology-journal.org/10.1051/ijmqe/2023018/olm . The article is accompanied by supplementary information that includes proofs to the theorems that are stated within the text of the article; linking our advanced methods to extant congeneric methods in the literature; comparison of the methods discussed herein, for partitioning a set of integers into 2 subsets and presentation of results on simulated data.
URI: https://bura.brunel.ac.uk/handle/2438/27885
DOI: https://doi.org/10.1051/ijmqe/2023018
ISSN: 2107-6839
Other Identifiers: ORCiD: Dalia Chakrabarty https://orcid.org/0000-0003-1246-4235
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Appears in Collections:Dept of Mathematics Research Papers

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