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Data for Calibration with confidence : a principled method for panel assessment
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MacKay, Robert S., Kenna, R., Low, Robert J. and Parker, S. (2017) Data for Calibration with confidence : a principled method for panel assessment. [Dataset]
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Official URL: https://doi.org/10.5255/UKDA-SN-852889
Abstract
Frequently, a set of objects has to be evaluated by a panel of assessors, but not every object is assessed by every assessor. A problem facing such panels is how to take into account different standards among panel members and varying levels of confidence in their scores. Here, a mathematically based algorithm is developed to calibrate the scores of such assessors, addressing both of these issues. The algorithm is based on the connectivity of the graph of assessors and objects evaluated, incorporating declared confidences as weights on its edges. If the graph is sufficiently well connected, relative standards can be inferred by comparing how assessors rate objects they assess in common, weighted by the levels of confidence of each assessment. By removing these biases, ‘true’ values are inferred for all the objects. Reliability estimates for the resulting values are obtained. The algorithm is tested in two case studies: one by computer simulation and another based on realistic evaluation data. The process is compared to the simple averaging procedure in widespread use, and to Fisher's additive incomplete block analysis. It is anticipated that the algorithm will prove useful in a wide variety of situations such as evaluation of the quality of research submitted to national assessment exercises; appraisal of grant proposals submitted to funding panels; ranking of job applicants; and judgement of performances on degree courses wherein candidates can choose from lists of options.
Item Type: | Dataset | ||||||
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Subjects: | Q Science > QA Mathematics | ||||||
Divisions: | Faculty of Science, Engineering and Medicine > Science > Mathematics | ||||||
Type of Data: | Experimental data | ||||||
Library of Congress Subject Headings (LCSH): | Algorithms, Educational tests and measurements, Peer review of research grant proposals, Employee selection | ||||||
Publisher: | University of Warwick, Department of Mathematics | ||||||
Official Date: | 4 December 2017 | ||||||
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Status: | Not Peer Reviewed | ||||||
Publication Status: | Published | ||||||
Media of Output (format): | .xlsx .xlsm .gitattributes .gitignore | ||||||
Access rights to Published version: | Open Access (Creative Commons) | ||||||
Copyright Holders: | University of Warwick | ||||||
Description: | UK Data Service data record consists of a readme file, all data files containing code elements are located at GitHub. These are accessible either via the 'Data Online' link on the official UKDS page or the 'Related dataset' link on this page. |
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