Skip to content

Research at St Andrews

Evaluating population data linkage: assessing stability, scalability, resilience and robustness across many data sets for comprehensive linkage evaluation

Research output: Contribution to conferenceAbstract


Thomas Stanley Dalton, Ozgur Akgun, Ahmad Al-Sediqi, Peter Christen, Alan Dearle, Eilidh Garrett, Alasdair Gray, Graham Njal Cameron Kirby, Alice Reid

School/Research organisations


Data linkage approaches are often evaluated with small or few data sets. If a linkage approach is to be used widely, quantifying its performance with varying data sets would be beneficial. In addition, given a data set needs to be linked, the true links are by definition unknown. The success of a linkage approach is thus difficult to comprehensively evaluate. This talk focuses on the use of many synthetic data sets for the evaluation of linkage quality achieved by automatic linkage algorithms in the domain of population reconstruction. It presents an evaluation approach which considers linkage quality when characteristics of the population are varied. We envisage a sequence of experiments where a set of populations are generated to consider how linkage quality varies across different populations: with the same characteristics, with differing characteristics, and with differing types and levels of corruption. The performance of an approach at scale is also considered. The approach to generate synthetic populations with varying characteristics on demand will also be addressed. The use of synthetic populations has the advantage that all the true links are known, thus allowing evaluation as if with real-world 'gold-standard' linked data sets. Given the large number of data sets evaluated against we also give consideration as to how to present these findings. The ability to assess variations in linkage quality across many data sets will assist in the development of new linkage approaches and identifying areas where existing linkage approaches may be more widely applied.


Original languageEnglish
Publication statusPublished - 2 Apr 2017
EventUK Administrative Data Research Network Annual Research Conference: Social science using administrative data for public benefit - Royal College of Surgeons, Edinburgh, United Kingdom
Duration: 1 Jun 20172 Jun 2017


ConferenceUK Administrative Data Research Network Annual Research Conference
Abbreviated titleADRN2017
CountryUnited Kingdom
Internet address

    Research areas

  • data linkage

Discover related content
Find related publications, people, projects and more using interactive charts.

View graph of relations

Related by author

  1. Linking Scottish vital event records using family groups

    Akgün, Ö., Dearle, A., Kirby, G. N. C., Garrett, E., Dalton, T. S., Christen, P., Dibben, C. J. L. & Williamson, L. E. P., 25 Mar 2019, In : Historical Methods: a Journal of Quantitative and Interdisciplinary History. Latest articles, 17 p.

    Research output: Contribution to journalArticle

  2. Probabilistic linkage of vital event records in Scotland using familial groups

    Akgun, O., Dalton, T. S., Dearle, A., Garrett, E. & Kirby, G. N. C., 11 May 2017.

    Research output: Contribution to conferenceAbstract

  3. Record linking using metric space similarity search

    Dearle, A., Kirby, G. N. C., Akgun, O. & Dalton, T. S., 2 Apr 2017.

    Research output: Contribution to conferenceAbstract

ID: 250035951