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Jones, Kyle M. L. – Education and Information Technologies, 2019
Institutions are applying methods and practices from data analytics under the umbrella term of "learning analytics" to inform instruction, library practices, and institutional research, among other things. This study reports findings from interviews with professional advisors at a public higher education institution. It reports their…
Descriptors: Academic Advising, Instructional Systems, Library Services, Institutional Research
Rowe, Emma – Discourse: Studies in the Cultural Politics of Education, 2019
This paper explores third-wave post-neoliberalism as an assemblage, fractured and dis/embodied, a mobile tool of governance articulated in various shapes across geopolitical sites. Post-neoliberalism is assembled alongside other key cultural shifts, such as post-truth, posthuman and the computational turn. In light of this Special Issue, this…
Descriptors: Social Systems, Neoliberalism, Governance, Educational Change
Prinster, Andrew J.; Hoskins, Josephina L.; Strode, Paul K. – American Biology Teacher, 2019
Students learning the skills of science benefit from opportunities to move between the scientific problems and questions they confront and the mathematical tools available to answer the questions and solve the problems. Indeed, students learn science best when they are actively engaged in pursuing answers to authentic and relevant questions. We…
Descriptors: Science Education, Science Process Skills, Problem Solving, Statistical Analysis
Amin, Awatif – ProQuest LLC, 2019
The persistent difficulty of retaining college students through graduation has become a global problem. The purpose of this quantitative, descriptive, and retrospective study was to apply data mining methods, tools, and algorithms to analyze enrollment data for issues affecting STEM students' retention at an historically black college (HBCU). The…
Descriptors: STEM Education, Black Colleges, Academic Persistence, School Holding Power
Mihaljevic Kosor, Maja; Malesevic Perovic, Lena; Golem, Silva – Problems of Education in the 21st Century, 2019
One of the main goals of education policy is to enhance educational outcomes. If resources are used inefficiently, they will fail to maximise those outcomes. Data Envelopment Analysis was used to calculate technical efficiency of public spending on education for EU-28 using the latest higher education statistics available. Focusing on European…
Descriptors: Cost Effectiveness, Educational Finance, Higher Education, Data Analysis
Straulino, Samuele – Physics Teacher, 2019
The pendulum has a great relevance in physics and it has been explored in educational papers from many theoretical or experimental points of view (see, for example, Refs. 1-12 and references therein). Here a method for the measurement of the gravitational acceleration with a large number of trials is presented; we assume that the systematic errors…
Descriptors: Scientific Concepts, Physics, Laboratory Equipment, Measurement
How, Meng-Leong; Hung, Wei Loong David – Education Sciences, 2019
Educational stakeholders would be better informed if they could use their students' formative assessments results and personal background attributes to predict the conditions for achieving favorable learning outcomes, and conversely, to gain awareness of the "at-risk" signals to prevent unfavorable or worst-case scenarios from happening.…
Descriptors: Artificial Intelligence, Bayesian Statistics, Models, Data Use
Ratcliffe, Michael R. – Geography Teacher, 2019
Geography provides context to the information collected, tabulated, and disseminated by the Census Bureau, whether data for the United States as a whole, a state, a congressional district, a county or city, or a census tract (roughly the size of a neighborhood). Geographers perform the activities necessary to update and maintain the geographic…
Descriptors: Census Figures, Public Agencies, Geography, Federal Government
IJzendoorn, Marinus H. – New Directions for Child and Adolescent Development, 2019
Randomized controlled trials are a special case of designs using an unbiased instrument to take care of confounders even if they are unmeasured or unknown. Another example of studies using instrumental variables is the Mendelian experiment and Directed Acyclic Graphs show the power of such designs to enhance the internal validity. It is argued…
Descriptors: Research Methodology, Randomized Controlled Trials, Researchers, Participatory Research
Sadeghi, Reza; Mazloomy-Mahmoodabad, Seyed-Saeed; Rezaeian, Mohsen; Fallahzadeh, Hossein; Khanjani, Narges – Health Education Research, 2019
In recent years, the geographic information system (GIS) application has used the latest spatial data to help researchers make the right decisions in the shortest time. This study was conducted with the aim of using geographic information systems (ArcGIS) for selecting the best location for installing banners and billboards in a health campaign.…
Descriptors: Geographic Information Systems, Geographic Location, Signs, Health Promotion
Jopke, Nikolaus; Gerrits, Lasse – International Journal of Social Research Methodology, 2019
There is a need to improve the ways in which Qualitative Comparative Analysis (QCA) handles qualitative data. To this end, we propose to include ideas and routines from Grounded Theory (GT) in QCA. We will first argue that there is a natural fit between the two on the ontological level. On the methodological level, we will demonstrate in what ways…
Descriptors: Qualitative Research, Comparative Analysis, Grounded Theory, Sampling
LoPresto, Michael C. – Physics Teacher, 2019
A primary goal of general education introductory astronomy courses often is to provide students with examples of how science is actually done. Low to nonexistent mathematical prerequisites in some courses can make useful exercises difficult to find, and sometimes very difficult for students, especially if the exercises feature quantitative…
Descriptors: Astronomy, Science Instruction, Data Collection, Space Exploration
Hatala, Rose; Gutman, Jacqueline; Lineberry, Matthew; Triola, Marc; Pusic, Martin – Advances in Health Sciences Education, 2019
Learning curves can support a competency-based approach to assessment for learning. When interpreting repeated assessment data displayed as learning curves, a key assessment question is: "How well is each learner learning?" We outline the validity argument and investigation relevant to this question, for a computer-based repeated…
Descriptors: Medicine, Metabolism, Physicians, Clinical Diagnosis
Daniel, Ben Kei – British Journal of Educational Technology, 2019
Big Data refers to large and disparate volumes of data generated by people, applications and machines. It is gaining increasing attention from a variety of domains, including education. What are the challenges of engaging with Big Data research in education? This paper identifies a wide range of critical issues that researchers need to consider…
Descriptors: Data, Educational Research, Information Utilization, Epistemology
Hao, Jiangang; Ho, Tin Kam – Journal of Educational and Behavioral Statistics, 2019
Machine learning is a popular topic in data analysis and modeling. Many different machine learning algorithms have been developed and implemented in a variety of programming languages over the past 20 years. In this article, we first provide an overview of machine learning and clarify its difference from statistical inference. Then, we review…
Descriptors: Artificial Intelligence, Statistical Inference, Data Analysis, Programming Languages

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