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Wesley Jeffrey; Benjamin G. Gibbs – Research in Higher Education, 2024
While a substantial body of work has shown that higher-SES students tend to apply to more selective colleges than their lower-SES counterparts, we know relatively less about "why" students differ in their application behavior. In this study, we draw upon a sociological approach to educational stratification to unpack the SES-based gap in…
Descriptors: College Applicants, Socioeconomic Status, Socioeconomic Influences, College Choice
Peer reviewedMcCallum, L. W. – Research in Higher Education, 1984
A meta-analysis of studies examining the criterion validity of student course evaluation data is discussed. Results indicate that the overall size of effect is not only highly significant, but also very meaningful when analyzed in relation to enhancing the likelihood of making more accurate tenure decisions. (Author/MLW)
Descriptors: Course Evaluation, Data Analysis, Decision Making, Faculty Evaluation
Peer reviewedHackman, Judith Dozier – Research in Higher Education, 1983
Seven institutional research maxims based on research and theory about how people cognitively process information are discussed: more may not be better; augment humans with models; chunk data wisely; know decision-makers; heuristics are not always helpful; arrange tables by patterns; and accept negative evidence and new hypotheses. (Author/MLW)
Descriptors: Bias, Data Analysis, Data Collection, Decision Making

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