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Sandlin, Michele – College and University, 2019
This feature focuses on the five areas an institution needs to know before implementing holistic measures. These include: what does a holistic review entail, how to be legally complaint, Sedlacek's noncognitive variables, applying student success measures, and the vital importance of training.
Descriptors: Predictor Variables, Success, Holistic Approach, Compliance (Legal)
Pearson, Denise; Armstrong, John – State Higher Education Executive Officers, 2016
Analysis of student-level data to inform policy and promote student success is a core function of executive higher education agencies. Postsecondary data systems have expanded their collection of data elements for use by policymakers, institutional staff, and the general public. State coordinating and governing boards use these data systems for…
Descriptors: Data, State Policy, Educational Policy, Data Collection
Boyer, Kristy Elizabeth, Ed.; Yudelson, Michael, Ed. – International Educational Data Mining Society, 2018
The 11th International Conference on Educational Data Mining (EDM 2018) is held under the auspices of the International Educational Data Mining Society at the Templeton Landing in Buffalo, New York. This year's EDM conference was highly competitive, with 145 long and short paper submissions. Of these, 23 were accepted as full papers and 37…
Descriptors: Data Collection, Data Analysis, Computer Science Education, Program Proposals
Carter, Lacy – ProQuest LLC, 2012
The purpose of this study was to examine the efficiency of Texas public school districts through Data Envelopment Analysis. The Data Envelopment Analysis estimation method calculated and assigned efficiency scores to each of the 931 school districts considered in the study. The efficiency scores were utilized in two phases. First, the school…
Descriptors: Data Analysis, Public Schools, School Districts, Efficiency
Data Quality Campaign, 2014
A wide array of federal funding opportunities exists to help states build a secure infrastructure to support data use and ensure that students are prepared for college and careers. Because the reporting requirements for these programs are frequently developed without input from other programs and agencies, grantees are required to report data that…
Descriptors: Student Records, Data Collection, Compliance (Legal), Federal Programs
Mitchell, Cathryn M. – ProQuest LLC, 2010
The purpose of this study was to determine job satisfaction levels of elementary principals in "major urban" districts in Texas and to identify strategies these principals used to cope with the demands of the position. Additionally, the project sought to find structures and supports needed to attract and retain principals in the…
Descriptors: Job Satisfaction, Coping, Data Analysis, Accountability
Vasconcelos, Marco; Urcuioli, Peter J. – Journal of the Experimental Analysis of Behavior, 2009
Zentall and Singer (2007a) hypothesized that our failure to replicate the work-ethic effect in pigeons (Vasconcelos, Urcuioli, & Lionello-DeNolf, 2007) was due to insufficient overtraining following acquisition of the high- and low-effort discriminations. We tested this hypothesis using the original work-ethic procedure (Experiment 1) and one…
Descriptors: Ethics, Enrollment, Evaluation Methods, Animals
Barnes, Tiffany, Ed.; Chi, Min, Ed.; Feng, Mingyu, Ed. – International Educational Data Mining Society, 2016
The 9th International Conference on Educational Data Mining (EDM 2016) is held under the auspices of the International Educational Data Mining Society at the Sheraton Raleigh Hotel, in downtown Raleigh, North Carolina, in the USA. The conference, held June 29-July 2, 2016, follows the eight previous editions (Madrid 2015, London 2014, Memphis…
Descriptors: Data Analysis, Evidence Based Practice, Inquiry, Science Instruction
Eykamp, Paul W. – New Directions for Institutional Research, 2006
This chapter explores how multiple approaches including data mining can help examine how the lengths of student enrollment are associated with varying numbers of advanced placement units. (Contains 3 tables and 5 figures.)
Descriptors: Time to Degree, Enrollment, Advanced Placement, Educational Finance
GOODMAN, RICHARD H.; WILSON, MICHAEL J. – 1967
DETAILED STATISTICAL AND PROCEDURAL INFORMATION IS PRESENTED ON (1) 1966 TITLE I PROJECTS IN NEW ENGLAND (INCLUDING PROJECTS OPERATED BY INSTITUTIONS FOR HANDICAPPED CHILDREN), (2) THE DISTRIBUTION AND EXPENDITURE OF TITLE I FUNDS, AND (3) DATA COLLECTING AND PROCESSING PROCEDURES FOR THE EVALUATION OF THE PROJECTS. IT IS FELT THAT THE OFFICE OF…
Descriptors: Annual Reports, Charts, Compensatory Education, Computer Programs
Agasisti, Tommaso; Salerno, Carlo – Education Economics, 2007
This study uses Data Envelopment Analysis to evaluate the cost efficiency of 52 Italian public universities. In addition to being one of the first such cost studies of the Italian system, it explicitly takes into account the internal cost structure of institutions' education programs; a task not prevalent in past Data Envelopment Analysis studies…
Descriptors: Universities, Efficiency, Foreign Countries, Cost Effectiveness
Thomsett-Scott, Beth; Reese, Patricia E. – Public Services Quarterly, 2006
The incorporation of technology into library processes has tremendously impacted staff and users alike. The University of North Texas (UNT) Libraries is no exception. Sixteen years of reference statistics are analyzed to examine the relationships between the implementation of CD-ROMs and web-based resources and the number of reference questions.…
Descriptors: Library Services, Reference Services, Interviews, Questioning Techniques
BURNS, THOMAS J. – 1966
THE FIRST PART OF THIS REPORT IS A DESCRIPTION OF THE ORGANIZATION AND OPERATION OF THE 1965 ELEMENTARY AND SECONDARY EDUCATION ACT TITLE I PROJECTS IN NEW HAMPSHIRE. THE ACTIVITIES OF 100 PERCENT OF THE PROJECTS ARE REPORTED. INFORMATION ABOUT THE PROJECTS WAS EXCHANGED AMONG LOCAL SCHOOL DISTRICTS AND VISITS TO COMPARABLE SCHOOL DISTRICTS IN…
Descriptors: Agency Cooperation, Community Action, Coordination, Dropout Rate
Pennsylvania Univ., Philadelphia. Univ. Planning Office. – 1965
TO ASSIST IN STUDYING THE PROBLEM OF ACCOMMODATING LARGE CLASS SECTIONS, THE PENNSYLVANIA UNIVERSITY PLANNING OFFICE CONDUCTED A STUDY TO DETERMINE THE NATURE OF THE EXPERIENCES WITH LARGE GROUP TEACHING IN FORTY-TWO MAJOR COLLEGES AND UNIVERSITIES THROUGHOUT THE COUNTRY. RESPONSES BY THIRTY-SEVEN INSTITUTIONS ARE INCLUDED IN THIS REPORT…
Descriptors: Class Size, Data Collection, Enrollment, Evaluation Methods
Daval, Nicola, Comp.; McConnell, Margaret, Comp. – 1988
This report presents data, describing mostly on-site institutional resources, from the 118 U.S. and Canadian research libraries that were members of the Association of Research Libraries (ARL) during the 1986-87 fiscal year. The following information is included in the document: (1) ARL library data tables reflecting data on collections,…
Descriptors: College Faculty, Data Collection, Doctoral Degrees, Enrollment
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