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Johnson, Eric M.; Chew, Robert – RTI International, 2021
Social Network Analysis (SNA) is a promising yet underutilized tool in the international development field. SNA entails collecting and analyzing data to characterize and visualize social networks, where nodes represent network members and edges connecting nodes represent relationships or exchanges among them. SNA can help both researchers and…
Descriptors: Social Networks, Network Analysis, Data Collection, Economic Development
Falkenstern, Colleen; Rochat, Angie – Western Interstate Commission for Higher Education, 2021
The effective use of data plays a critical role throughout the policy process -- from accurately capturing populations being served to monitoring and measuring implementation and allocation of resources. In order for data to be used in a manner that supports evidence-based decision-making there is a need for education leaders and policymakers to…
Descriptors: American Indian Students, Alaska Natives, Minority Group Students, Data Collection
Ruth E. Ryder; James Lynn Woodworth – Office of Elementary and Secondary Education, US Department of Education, 2021
The Department is providing States flexibility for reporting SY 2019-2020 average daily attendance (ADA) data in order to ensure the data are consistent and as accurate as possible. As required by section 8101(1) of the Elementary and Secondary Education Act of 1965 (ESEA), each State will continue to report ADA based on either the Federal or the…
Descriptors: Average Daily Attendance, Accuracy, Reliability, Reports
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Cooper, Robert J.; VanderWey, Scott A.; Wright, Kevin C. – Journal of Extension, 2019
Within Extension, certain personnel, facilitators, and volunteers expected to conduct research in the form of program evaluation may have little or no training in effective research design and practices. This circumstance can lead to difficulties in the implementation of evaluation procedures, particularly with regard to program evaluation…
Descriptors: Program Evaluation, Fidelity, Extension Education, Program Implementation
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Bergner, Yoav; von Davier, Alina A. – Journal of Educational and Behavioral Statistics, 2019
This article reviews how National Assessment of Educational Progress (NAEP) has come to collect and analyze data about cognitive and behavioral processes (process data) in the transition to digital assessment technologies over the past two decades. An ordered five-level structure is proposed for describing the uses of process data. The levels in…
Descriptors: National Competency Tests, Data Collection, Data Analysis, Cognitive Processes
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Miller, Elise S.; Shedd, Jessica M. – New Directions for Institutional Research, 2019
The federal government has collected data from colleges and universities for more than a century. However, how and what data are collected has evolved over time, as has the purposes for collecting those data. The most systematic collection of data happens through the Integrated Postsecondary Education Data System (IPEDS), which is required to be…
Descriptors: Postsecondary Education, Databases, Data Collection, Educational History
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Rotou, Ourania; Rupp, André A. – ETS Research Report Series, 2020
This research report provides a description of the processes of evaluating the "deployability" of automated scoring (AS) systems from the perspective of large-scale educational assessments in operational settings. It discusses a comprehensive psychometric evaluation that entails analyses that take into consideration the specific purpose…
Descriptors: Computer Assisted Testing, Scoring, Educational Assessment, Psychometrics
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Hawkins, Christie; Bailey, Lucy E. – New Directions for Institutional Research, 2020
The increasing volume of information and the intense pace of its circulation are changing the ways universities access, use, analyze, and provide data. Many have championed the use of large-scale databases to track student admissions and retention, faculty productivity, student wellness, and other phenomena that shape our understandings of higher…
Descriptors: Institutional Research, Data Analysis, Data Use, Colleges
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Bieda, Kristen N.; Salloum, Serena J.; Hu, Sihua; Sweeny, Shannon; Lane, John; Torphy, Kaitlin – Journal of Classroom Interaction, 2020
This paper discusses the challenges and lessons learned from conducting observations to measure the quality of classroom practice for a large-scale study of elementary teachers' mathematics instruction. Specifically, this paper shares our process for obtaining valid data for quality of elementary mathematics instruction; what we learned can inform…
Descriptors: Mathematics Instruction, Classroom Observation Techniques, Elementary School Teachers, Interrater Reliability
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Hines, Sally – International Journal of Social Research Methodology, 2020
Counting the Cost of Difference' replies to Alice Sullivan's piece on gender auditing in the UK Census. While Sullivan argues that the proposed changes to audit gender identity will dilute the meaning of 'sex' and thus the needs of women, I suggest that auditing on self-declared gender in Census 2021 signals a move towards the further recognition…
Descriptors: Foreign Countries, National Surveys, Census Figures, Sexual Identity
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Perez-Vergara, Kelly – Strategic Enrollment Management Quarterly, 2020
Institutional staff such as enrollment managers, business officers, and institutional researchers are often asked to predict enrollments. Developing any predictive model can be intimidating, particularly when there is no textbook to follow. This paper provides a practical framework for generating enrollment projection options and for evaluating…
Descriptors: Enrollment Projections, Enrollment Management, Enrollment Trends, Models
McKay, Heather; Haviland, Sara; Michael, Suzanne; Leibrandt, Sarah – Western Interstate Commission for Higher Education, 2020
Why do some innovations in policy or practice take off, while others fizzle out? Social scientists and policy experts have grappled with this question for decades, studying the diffusion of new ideas and examining how and why states, organizations, and institutions adopt innovations to their policies or practices. In recent years, states have…
Descriptors: Educational Innovation, Data Collection, Shared Resources and Services, Elementary Secondary Education
Marx, Teri; Peterson, Amy; Arden, Sarah – National Center on Intensive Intervention, 2020
During spring 2020, educators quickly adapted to providing interventions and collecting data virtually despite the challenges of the COVID-19 pandemic. Parents were critical partners in supporting opportunities for students with intensive needs to data-based individualization (DBI) Process practice and receive feedback and sharing what was working…
Descriptors: COVID-19, Pandemics, Individualized Instruction, Data Use
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Morrison, Judith A.; Malone, Danielle; Sorensen Petersen, Sara – Journal of Special Education Technology, 2023
The project described in this article focused on the school's environment and students' connections with the school. The project took place in a large, comprehensive high school with eight 12th grade students, one with intellectual disabilities, three with learning disabilities, two with autism spectrum disorders, and two with health impairments.…
Descriptors: Grade 12, High School Students, Students with Disabilities, Data Collection
Juan D’Brot; W. Chris Brandt – Region 5 Comprehensive Center, 2024
In today's educational landscape, state and local educational agencies (SEAs and LEAs) often experience challenges connecting large-scale accountability data with actual school improvement initiatives. These challenges tend to be rooted in incoherent design and use of data systems for continuous improvement. As we aim to support SEAs in…
Descriptors: Educational Improvement, Data Collection, State Departments of Education, School Districts
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