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Melissa G. Keith; Lindsey M. Freier; Marie Childers; Isabelle Ponce-Pore; Seth Brooks – Journal of Creative Behavior, 2024
Individuals and organizations frequently tout creative ideas as a desirable goal, and yet, creative ideas are frequently rejected. Creativity researchers have often suggested that creative ideas are rejected because they are perceived as riskier due to their inherent novelty or originality. Although this assumption is prevalent, we are unaware of…
Descriptors: Risk, Correlation, Creativity, Prediction
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Frank Lee; Alex Algarra – Information Systems Education Journal, 2025
This case study examines employee attrition, its detrimental effects on businesses, and the potential of data analytics to address this challenge. By employing Latent Dirichlet Allocation (LDA), a sophisticated NLP technique, we delve into the underlying reasons for employee departures. Additionally, we explore using RapidMiner to develop…
Descriptors: Labor Turnover, Data Analysis, Natural Language Processing, Employees
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Abigail R. Vild; Maggie E. Wilson; Christopher A. Was – Journal of Research in Education, 2025
Theories of self-regulated learning suggest a positive link between knowledge monitoring accuracy (the ability to predict test performance) and performance on tests. Put differently, students who accurately monitor their knowledge of course content more efficiently regulate study of course materials. However, a plethora of literature indicates…
Descriptors: Student Satisfaction, Undergraduate Students, Scores, Prediction
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James Alex Bonus; Miriam Brinberg; Rebecca A. Dore; Jason C. Coronel – Journal of Children and Media, 2025
Research on educational television has overwhelmingly investigated the impact of viewing on children's knowledge acquisition. However, this content might influence other important outcomes, such as children's interest in learning about new topics. To investigate this possibility, we invited parents of 3- to 8-year-old children (N = 83) to answer…
Descriptors: Educational Media, Young Children, Interests, Sciences
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Yunxuan Tang; Emma Harvey; Chengyuan Yao; Renzhe Yu; Rene F. Kizilcec; Christopher Brooks – International Educational Data Mining Society, 2025
Predictive models of student success can provide timely information to inform interventions in K-12 and higher education. However, the design and implementation of these predictive models require various stakeholders to make decisions about the prediction target, data sources, processing, training, models, and deployment strategies. These choices…
Descriptors: Prediction, Models, Success, College Freshmen
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Qiwei Zhou; Ziteng Yang; Hang Zhang – Journal of College Student Development, 2025
In the post-pandemic era, universities in multi-stakeholder environments have increased research interest in responsible leadership and organizational citizenship behavior for the environment (OCBE) on university campuses, as a means to address global environmental degradation and enhance the environmental performance of higher education…
Descriptors: College Students, Citizenship, Student Participation, Supervisors
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Paul A. Jewsbury; J. R. Lockwood; Matthew S. Johnson – Large-scale Assessments in Education, 2025
Many large-scale assessments model proficiency with a latent regression on contextual variables. Item-response data are used to estimate the parameters of the latent variable model and are used in conjunction with the contextual data to generate plausible values of individuals' proficiency attributes. These models typically incorporate numerous…
Descriptors: Item Response Theory, Data Use, Models, Evaluation Methods
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Chow, Julie C.; Hormozdiari, Fereydoun – Journal of Autism and Developmental Disorders, 2023
The early detection of neurodevelopmental disorders (NDDs) can significantly improve patient outcomes. The differential burden of non-synonymous de novo mutation among NDD cases and controls indicates that de novo coding variation can be used to identify a subset of samples that will likely display an NDD phenotype. Thus, we have developed an…
Descriptors: Prediction, Neurodevelopmental Disorders, Identification, Genetics
Weihao Wang – ProQuest LLC, 2024
In this work, we introduce a novel oversampling technique, the theory of inheritance and Gower distance-based oversampling (TIGO) method, designed to address class imbalance issues in mixed categorical and continuous variables data set. Drawing inspiration from genetic inheritance principles, TIGO synthesizes new minority class data,…
Descriptors: Sampling, Statistics Education, Data Analysis, Prediction
Danielle Bonner – ProQuest LLC, 2024
The purpose of this study is to determine if personality traits can predict the coaching intervention style preferences of teachers in the United States of America. The rationale for this study is to gain a better understanding of whether there are personality traits that are better suited to particular coaching techniques/methods. To address this…
Descriptors: Teachers, Coaching (Performance), Intervention, Personality Traits
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Tong Zhang; Ermei Lu; Quanming Liao; Deliang Sun – Journal of Psychoeducational Assessment, 2025
Purpose: Academic anxiety is a common phenomenon in the college student population, which has an important impact on students' psychological health and academic performance. Therefore, by exploring the effects of college students' professional commitment and achievement goal orientation variables on academic anxiety, it helps to understand…
Descriptors: College Students, Anxiety, Academic Achievement, Student Attitudes
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Mahmoud Abdasalam; Ahmad Alzubi; Kolawole Iyiola – Education and Information Technologies, 2025
This study introduces an optimized ensemble deep neural network (Optimized Ensemble Deep-NN) to enhance the accuracy of predicting student grades. This model solves the problem of different and complicated student performance data by using deep neural networks, ensemble learning, and a number of optimization algorithms, such as Adam, SGD, and RMS…
Descriptors: Grades (Scholastic), Prediction, Accuracy, Artificial Intelligence
Joshua Angrist; Peter Hull; Russell Legate-Yang; Parag A. Pathak; Christopher R. Walters – National Bureau of Economic Research, 2025
School districts increasingly gauge school quality with surveys that ask about school climate and student engagement. We use data from New York City's middle and high schools to compare the long-run predictive validity of surveys with that of conventional test score value-added models (VAMs). Our analysis leverages the New York school match, which…
Descriptors: School Surveys, Middle Schools, High Schools, Prediction
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Kara K. Palmer; David. F. Stodden; Bryan M. Terlizzi; Adam Pennell; Michael A. Nunu; Leah E. Robinson – Journal of Motor Learning and Development, 2025
There is a common assumption that changes in developmental movement patterns (process) leads to better skill outcome performance (product); however, limited longitudinal data evaluate this assumption. This study examined (a) the longitudinal relationship among process and product motor skill scores across early childhood (3.5-6 years) and (b) the…
Descriptors: Motor Development, Psychomotor Skills, Preschool Children, Age Differences
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Yumou Wei; Paulo Carvalho; John Stamper – International Educational Data Mining Society, 2025
Educators evaluate student knowledge using knowledge component (KC) models that map assessment questions to KCs. Still, designing KC models for large question banks remains an insurmountable challenge for instructors who need to analyze each question by hand. The growing use of Generative AI in education is expected only to aggravate this chronic…
Descriptors: Artificial Intelligence, Cluster Grouping, Student Evaluation, Test Items
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