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Johnston, William R.; Hamilton, Laura S.; Grant, David; Setodji, Claude Messan; Doss, Christopher Joseph; Young, Christopher J. – RAND Corporation, 2020
This report provides information about the sample, survey instrument, and resultant data for the 2019 Learn Together Surveys (LTS) that were administered to principals and teachers in March 2019 via the RAND Corporation's American Educator Panels (AEP). It includes a full set of basic frequency tables for each survey. The LTS focus on several…
Descriptors: Teacher Surveys, National Surveys, Social Emotional Learning, Postsecondary Education
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Young, Christopher J.; Grant, David; Hamilton, Laura S.; Hunter, Gerald P.; Setodji, Claude Messan; Strawn, Matt – RAND Corporation, 2020
This report provides information about the sample, survey instrument, and resultant data for the 2020 Learn Together Surveys (LTS) that were administered to principals and teachers in March 2020 via the RAND Corporation's American Educator Panels. It includes a full set of basic frequency tables for each survey. The LTS focus on several topics,…
Descriptors: National Surveys, Teacher Surveys, Administrator Surveys, Secondary School Teachers
Pane, John F.; Steiner, Elizabeth D.; Baird, Matthew D.; Hamilton, Laura S.; Pane, Joseph D. – RAND Corporation, 2017
The basic concept of personalized learning (PL) -- instruction that is focused on meeting students' individual learning needs while incorporating their interests and preferences -- has been a longstanding practice in U.S. K-12 education. Options for personalization have increased as personal computing devices have become increasingly affordable…
Descriptors: Individualized Instruction, Program Implementation, Program Effectiveness, Competency Based Education
Marsh, Julie A.; Pane, John F.; Hamilton, Laura S. – RAND Corporation, 2006
Data-driven decision making (DDDM), applied to student achievement testing data, is a central focus of many school and district reform efforts, in part because of federal and state test-based accountability policies. This paper uses RAND research to show how schools and districts are analyzing achievement test results and other types of data to…
Descriptors: Data Use, Decision Making, Data Analysis, Educational Improvement