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Duncan Culbreth; Rebekah Davis; Cigdem Meral; Florence Martin; Weichao Wang; Sejal Foxx – TechTrends: Linking Research and Practice to Improve Learning, 2025
Monitoring applications (MAs) use digital and online tools to collect and track data on student behavior, and they have become increasingly popular among schools. Empirical research on these complex surveillance platforms is scant, and little is known about the efficacy or impact that they have on students. This study used a multi-method…
Descriptors: High School Students, COVID-19, Pandemics, Progress Monitoring
Porter, Kristin E.; Balu, Rekha – MDRC, 2016
Education systems are increasingly creating rich, longitudinal data sets with frequent, and even real-time, data updates of many student measures, including daily attendance, homework submissions, and exam scores. These data sets provide an opportunity for district and school staff members to move beyond an indicators-based approach and instead…
Descriptors: Models, Prediction, Statistical Analysis, Elementary Secondary Education
Oren Pizmony-Levy; James Harvey; William H. Schmidt; Richard Noonan; Laura Engel; Michael J. Feuer; Henry Braun; Carla Santorno; Iris C. Rotberg; Paul Ash; Madhabi Chatterji; Judith Torney-Purta – Quality Assurance in Education: An International Perspective, 2014
Purpose: This paper presents a moderated discussion on popular misconceptions, benefits and limitations of International Large-Scale Assessment (ILSA) programs, clarifying how ILSA results could be more appropriately interpreted and used in public policy contexts in the USA and elsewhere in the world. Design/methodology/approach: To bring key…
Descriptors: Misconceptions, International Assessment, Evaluation Methods, Measurement
Recruiting New Teachers, Inc., Belmont, MA. – 1998
This handbook is designed to help beginning evaluators of teacher recruitment programs. It addresses the information and assessment needs of teacher recruitment programs. It takes a hands-on approach and includes worksheets and instructions for using them. After presenting tips for getting started, the handbook offers eight steps to successful…
Descriptors: Data Analysis, Data Collection, Data Interpretation, Elementary Secondary Education
Owens, Robert G.; And Others – 1989
The purpose of this research was to develop, test, and demonstrate a systematic methodology of triangulation. Triangulation is a technique used to establish credibility of data gathered in qualitative ways. Triangulated conclusions are more stable than any of the individual vantage points from which they were triangulated. Using a previous study…
Descriptors: Data Analysis, Data Interpretation, Elementary Secondary Education, Ethnography
Callison, Daniel; Haycock, Gloria – Educational Technology, 1988
Describes a methodology for student involvement in courseware evaluation and for utilizing student reactions in purchasing and implementation decisions. The evaluation forms used in a survey of 2,308 Indiana students are presented, and the results of that survey are discussed. (18 references) (CLB)
Descriptors: Computer Assisted Instruction, Courseware, Data Interpretation, Elementary Secondary Education

Meline, Timothy; Paradiso, Teri – Language, Speech, and Hearing Services in Schools, 2003
This article examines the clinician/researcher relationship, suggests directions for improving the relationship, and discusses avenues for transferring research information to clinical practice. An eight-step model for transferring research studies to practice is adopted and three steps are targeted for discussion and illustration. A case study…
Descriptors: Case Studies, Data Interpretation, Elementary Secondary Education, Evaluation Methods

Ysseldyke, Jim; Bielinski, John – Exceptional Children, 2002
A study compared the effects of different methods of analyzing trends to illustrate how failure to account for change in classification will lead to misinterpretation of data on the performance of students with disabilities. Data from five years of assessment in Texas is used to illustrate effects of classification changes. (Contains references.)…
Descriptors: Academic Achievement, Accountability, Classification, Data Collection

Armstrong, Robert L.; Dusseau, Deborah Jeffries – Journal of School Improvement, 2001
Analyzes two possible assessment outcomes: (1) differing results on two or more assessments; and (2) loss of achievement after improvement cycle. Proposes short- and long-term solutions to problematic results, including analyzing differences in tests and pre-planning to avoid flaws in assessment design. (NB)
Descriptors: Data Interpretation, Differences, Educational Environment, Educational Objectives

Marklund, Sixten – Evaluation and Program Planning: An International Journal, 1984
While the "Standards for Evaluations of Educational Programs, Projects and Materials" provides a good checklist of prerequisites, such standards do not guarantee indisputable outcomes. Reanalysis of reading comprehension and mathematics mean achievement data from an international evaluation study illustrates how political bias can…
Descriptors: Academic Achievement, Book Reviews, Data Interpretation, Educational Assessment

Schmoker, Mike – Educational Leadership, 2003
Calls for simplicity when presenting data on student achievement. Data should help teachers improve teaching and learning, and focus on specific goals such as determining how many students are succeeding in a subject and, within that subject, what are the areas of strength or weakness. (Contains 22 references.) (WFA)
Descriptors: Academic Achievement, Data Analysis, Data Collection, Data Interpretation

Strain, Phillip S.; Kohler, Frank W.; Gresham, Frank – Behavioral Disorders, 1998
Discusses logic and interpretation problems inherent in doing quantitative syntheses of single-case research. Addresses the meta-analytic method of using percentage of nonoverlapping data, highlighting special concerns related to withdrawal designs, sensitivity to variability in behavior, social significance of behavior change, and variables that…
Descriptors: Behavior Disorders, Case Studies, Data Interpretation, Elementary Secondary Education
Mar, Harvey H.; Sall, Nancy – 2000
This final report describes the activities and outcomes of a project designed to develop and establish a psychoeducational assessment model to enhance the ability of educators, psychologists, and learning specialists to design and conduct meaningful evaluations of students who are deaf-blind. By focusing on psychoeducational assessment, this…
Descriptors: Data Interpretation, Deaf Blind, Elementary Secondary Education, Evaluation Methods
McLean, James E. – 1995
This book offers guidelines for action research, a process in which teachers experiment with various strategies at the classroom level. Action research is the process of systematically evaluating the consequences of educational decisions and adjusting practices to maximize effectiveness. Essentially the examination of one's own practice, it…
Descriptors: Action Research, Computer Software, Data Interpretation, Database Management Systems

Bernhardt, Victoria L. – Educational Leadership, 2003
A primer for schools attempting to analyze the data they collect. Describes ways schools can get a better picture of how to improve learning by gathering, intersecting, and organizing four categories of data more efficiently: (1) demographic data; (2) student-learning data; (3) perceptions data; and (4) school-processes data. (WFA)
Descriptors: Data Analysis, Data Collection, Data Interpretation, Data Processing
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