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Bernard, Taryn – Journal of Student Affairs in Africa, 2021
When writing about transformation in higher education (HE) in South Africa, it is quite popular to mention the fall of apartheid, and perhaps also 1994, as a starting point for significant change. I, myself, have made this mistake (see Bernard, 2015). However, the recent #FeesMustFall protests highlighted that many approaches to transformation…
Descriptors: Educational Environment, Foreign Countries, Higher Education, Educational Change
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Cui, Zhongmin – Educational Measurement: Issues and Practice, 2021
Commonly used machine learning applications seem to relate to big data. This article provides a gentle review of machine learning and shows why machine learning can be applied to small data too. An example of applying machine learning to screen irregularity reports is presented. In the example, the support vector machine and multinomial naïve…
Descriptors: Artificial Intelligence, Man Machine Systems, Data, Bayesian Statistics
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Huggins-Manley, A. Corinne; Beal, Carole R.; D'Mello, Sidney K.; Leite, Walter L.; Cetin-Berber, Dyugu Dee; Kim, Dongho; McNamara, Danielle S. – Journal of Research on Educational Effectiveness, 2019
Virtual learning environments (VLEs) are increasingly used at-scale in educational contexts to facilitate teaching and promote learning, and the data they produce can be used for educational research purposes. Meanwhile, the U.S. Department of Education's Office of Educational Technology has repeatedly emphasized the importance of using evidence…
Descriptors: Virtual Classrooms, Construct Validity, Data, Educational Research
Huggins-Manley, A. Corinne; Beal, Carole R.; D'Mello, Sidney K.; Leite, Walter L.; Cetin-Berber, Dyugu Dee; Kim, Dongho; McNamara, Danielle S. – Grantee Submission, 2019
Virtual learning environments (VLE) are increasingly used at-scale in educational contexts to facilitate teaching and promote learning, and the data they produce can be used for educational research purposes. Meanwhile, the U.S. Department of Education's Office of Educational Technology has repeatedly emphasized the importance of using evidence to…
Descriptors: Virtual Classrooms, Construct Validity, Data, Educational Research
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Rossman, Allan; Kotz, Brian – Journal of Statistics Education, 2018
Brian Kotz is Professor of Mathematics and Statistics at Montgomery College. He is a former member of the American Statistical Association/American Mathematical Association of Two-Year Colleges (ASA)/(AMATYC) Joint Committee and the current chair of the AMATYC Data Science Subcommittee. This interview took place via email on November 23,…
Descriptors: Two Year Colleges, Statistics, Data, Teaching Experience
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Ellis, Cath – British Journal of Educational Technology, 2013
Learning analytics is a relatively new field of inquiry and its precise meaning is both contested and fluid (Johnson, Smith, Willis, Levine & Haywood, 2011; LAK, n.d.). Ferguson (2012) suggests that the best working definition is that offered by the first Learning Analytics and Knowledge (LAK) conference: "the measurement, collection,…
Descriptors: Data, Data Analysis, Students, Student Evaluation
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Wang, Yinying – Education Policy Analysis Archives, 2017
Despite abundant data and increasing data availability brought by technological advances, there has been very limited education policy studies that have capitalized on big data--characterized by large volume, wide variety, and high velocity. Drawing on the recent progress of using big data in public policy and computational social science…
Descriptors: Educational Policy, Educational Research, Misconceptions, Barriers
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Pratt, John – Higher Education Review, 2013
According to researchers at the University of Southern California (Washington Post, 2011), the world's storage capacity for digital data increased from 0.2 billion gigabytes in 1986 to 276 billion gigabytes by 2007 (at the same time analogue storage capacity increased from 2.6 to 18.9 billion gigabytes). This huge growth is often seen in…
Descriptors: Information Storage, Information Management, Educational Research, Archives
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Kelty-Stephen, Damian G.; Mirman, Daniel – Cognition, 2013
Our previous work interpreted single-lognormal fits to inter-gaze distance (i.e., "gaze steps") histograms as evidence of multiplicativity and hence interactions across scales in visual cognition. Bogartz and Staub (2012) proposed that gaze steps are additively decomposable into fixations and saccades, matching the histograms better and…
Descriptors: Eye Movements, Statistical Distributions, Graphs, Data
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Weitzman, Beth C.; Silver, Diana – American Journal of Evaluation, 2013
In this commentary, we examine Braverman's insights into the trade-offs between feasibility and rigor in evaluation measures and reject his assessment of the trade-off as a zero-sum game. We, argue that feasibility and policy salience are, like reliability and validity, intrinsic to the definition of a good measure. To reduce the tension between…
Descriptors: Program Evaluation, Measures (Individuals), Evaluation Methods, Measurement
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Wills, Andy J.; Pothos, Emmanuel M. – Psychological Bulletin, 2012
Vanpaemel and Lee (2012) argued, and we agree, that the comparison of formal models can be facilitated by Bayesian methods. However, Bayesian methods neither precede nor supplant our proposals (Wills & Pothos, 2012), as Bayesian methods can be applied both to our proposals and to their polar opposites. Furthermore, the use of Bayesian methods to…
Descriptors: Classification, Bayesian Statistics, Models, Comparative Analysis
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Rose, L. Todd; Fischer, Kurt W. – Measurement: Interdisciplinary Research and Perspectives, 2011
The focus article by Coburn and Turner (this issue) seeks to provide a comprehensive framework for understanding data use in the context of data-use interventions. This commentary focuses on what the authors see as a glaring omission in what is otherwise a valuable framework: the issue of "useful data." It is their contention that the usefulness…
Descriptors: Decision Making, Data, Data Analysis, Data Interpretation
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Jordan, Thomas E. – Social Indicators Research, 2011
This essay examines the stages of inquiry when we seek to formulate quality of life in an era before our own. There arises the question of the extent to which today's formulation of quality of life can be applied to an era far removed from our own. Implicitly, there is the nature of the time interval, T[subscript 1]...T[subscript n], and the…
Descriptors: Quality of Life, Data, Data Analysis, Social Indicators
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Weiss, Janet A. – Teachers College Record, 2012
This commentary on the special issue on data use highlights the distinctions between data systems intended to improve the performance of school staff and those intended to hold schools and districts accountable for outcomes. It advises researchers to be alert to the differences in the policy logics connected with each approach.
Descriptors: Educational Change, Teacher Improvement, Accountability, Data
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Gonzalez, Cleotilde; Dutt, Varun – Psychological Review, 2012
Hills and Hertwig (2012) challenge the proposed similarity of the exploration-exploitation transitions found in Gonzalez and Dutt (2011) between the 2 experimental paradigms of decisions from experience (sampling and repeated-choice), which was predicted by an instance-based learning (IBL) model. The heart of their argument is that in the sampling…
Descriptors: Data, Models, Learning Processes, Criticism
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