The role of big data in education quality monitoring: implications at the global, regional and national levels

Research output: Contribution to conferencePresentation

Abstract

  The paper discusses the role of big data in monitoring education quality and implications at the global, regional and national levels in the light of international efforts to monitor progress in achieving UN Sustainable Development Goal in Education (SDG 4). Data on learning outcomes are central in establishing and monitoring education quality. The proportion of children achieving at least a minimum proficiency in reading and mathematics is a primary indicator of SDG 4. For this indicator to be meaningful across contexts, a shared understanding must be reached on its constituents and the data used to report progress. While large-scale assessments are widely recognized as a primary source for such data, they vary in method and scope, posing major challenges for global monitoring. Consequently approaches to link major cross-national assessments and to harmonise quantitative data across such programs seem promising, despite their limitations in reach and in providing substantive information to inform improvements. In contrast, common described scales provide a reference point for data from a range of different assessments, be they international or national in scope, and including learning data on out-of-school children. 
Original languageEnglish
Publication statusPublished - Nov 2018
Externally publishedYes
EventInternational Association for Educational Assessment (IAEA) - Oxford, UK
Duration: 1 Nov 2018 → …

Conference

ConferenceInternational Association for Educational Assessment (IAEA)
Period1/11/18 → …

Keywords

  • Monitoring
  • Global education
  • Data in education
  • Education quality
  • Learning outcomes

Disciplines

  • Educational Assessment, Evaluation, and Research
  • International and Comparative Education

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