Title: Examining the data to identify essential questions - guilty before innocent

Authors: Khalid Khan; Jon Mason

Addresses: College of Education, Charles Darwin University, Australia ' College of Education, Charles Darwin University, Australia

Abstract: We use the democratic legal position of presuming innocence until proven guilty as a metaphor to be considered in reverse when examining data: guilty before innocent. As the giant Internet corporations take greater control of the entire data production and consumption lifecycle there is much at stake. Clichéd phrases that generalise '21st century skills' seem no longer adequate for describing the skills and competencies needed by next generation 'smart' learners. As educators, shifting focus from digital to data literacy moves our attention from the competencies necessary in interacting with devices to the data that is produced. Post-truth and big data describe new realities in which any mix of data, information and knowledge demands scrutiny and validation. As educators, we seek to identify the kinds of questions that require deep investigation as we develop and refine informed inquiry necessary in an age enabled and disrupted by digital innovation and ubiquitous data. Identifying questions invokes critical thinking and is further informed by mathematical thinking. We propose essential learning skills as a construct that could guide further research into the issues raised.

Keywords: data literacy; data visualisation; data storytelling; data governance; critical thinking; mathematical thinking; essential learning skills.

DOI: 10.1504/IJSMARTTL.2019.099511

International Journal of Smart Technology and Learning, 2019 Vol.1 No.3, pp.244 - 266

Received: 29 Jun 2018
Accepted: 20 Sep 2018

Published online: 07 May 2019 *

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