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Qinjin Jia; Jialin Cui; Ruijie Xi; Chengyuan Liu; Parvez Rashid; Ruochi Li; Edward Gehringer – International Educational Data Mining Society, 2024
Feedback on student assignments plays a crucial role in steering students toward academic success. To provide feedback more promptly and efficiently, researchers are actively exploring the use of large language models (LLMs) to automatically generate feedback on student artifacts. Although the generated feedback is highly fluent, coherent, and…
Descriptors: Feedback (Response), Assignments, Artificial Intelligence, Accuracy
Benny G. Johnson; Jeffrey S. Dittel; Rachel Van Campenhout – International Educational Data Mining Society, 2024
Combining formative practice with the primary expository content in a learning by doing method is a proven approach to increase student learning. Artificial intelligence has led the way for automatic question generation (AQG) systems that can generate volumes of formative practice otherwise prohibitive with human effort. One such AQG system was…
Descriptors: Artificial Intelligence, Automation, Textbooks, Questioning Techniques
Jade Mai Cock; Hugues Saltini; Haoyu Sheng; Riya Ranjan; Richard Davis; Tanja Käser – International Educational Data Mining Society, 2024
Predictive models play a pivotal role in education by aiding learning, teaching, and assessment processes. However, they have the potential to perpetuate educational inequalities through algorithmic biases. This paper investigates how behavioral differences across demographic groups of different sizes propagate through the student success modeling…
Descriptors: Demography, Statistical Bias, Algorithms, Behavior
Li, Danfeng; Shi, Jiannong – High Ability Studies, 2021
This study examined the effects of fluid intelligence and trait emotional intelligence (trait EI) on academic performance in primary school-aged intellectually gifted and average children (8-11 years of age). One hundred and four average children and eighty gifted children were administered a Raven's Standard Progressive Matrices and a Trait…
Descriptors: Gifted, Prediction, Academic Achievement, Mathematics Achievement
Sternberg, Robert J.; Wong, Chak Haang; Kreisel, Anastasia P. – Journal of Intelligence, 2021
Cultural intelligence is one's ability to adapt when confronted with problems arising in interactions with people or artifacts of diverse cultures. In this study, we conduct an initial construct-validation and assessment of a maximum-performance test of cultural intelligence. We assess the psychometric properties of the test and also correlate the…
Descriptors: Intelligence, Cultural Awareness, Adjustment (to Environment), Intelligence Tests
Chu, Jinjin; Szlagor, Maciej – International Journal of Web-Based Learning and Teaching Technologies, 2023
Distance education between the student and the teacher through online sessions can make it difficult for a student who does not understand a concept to ask for clarification. Lack of a physical campus or social pressure from peers can demotivate students from completing their assignments. The framework of multi-intelligence English teaching based…
Descriptors: Distance Education, Blended Learning, Educational Technology, Multiple Intelligences
Deutsch, Joe – Quest, 2021
The National Association for Kinesiology in Higher Education's (NAHKE) efforts to connect professionals to share our strategies and passions for success within kinesiology are more valuable than ever before and developing emotionally intelligent leaders and administrators is very important. For the 30th Delphine Hanna Commemorative Lecture, the…
Descriptors: Emotional Intelligence, Kinesiology, Higher Education
Ellala, Ziyad K.; Abu Attiyeh, Jamal H.; Ellala, Saeb K.; Kaba, Abdoulaye – Gifted Education International, 2022
The current study aimed to identify the level of emotional intelligence of outstanding students at the College of Education, Al Ain University (AAU), the United Arab Emirates, and their counterparts at Princess Nourah University (PNU), in the Kingdom of Saudi Arabia. A sample of 77 students was selected from both universities, of whom 41 students…
Descriptors: Emotional Intelligence, Academically Gifted, Foreign Countries, Schools of Education
Figueiredo, Sandra – European Journal of Educational Research, 2022
The main goal of this study is to examine the differences between school-aged children with different chronotypes who are only children or have a sibling in the household, regarding their sleeping habits and performance in intelligence tasks. The main measures used were Chronotype Questionnaire for Children and Raven's Coloured Progressive…
Descriptors: Foreign Countries, Intelligence Tests, Grade 1, Sleep
Hoq, Muntasir; Brusilovsky, Peter; Akram, Bita – International Educational Data Mining Society, 2023
Prediction of student performance in introductory programming courses can assist struggling students and improve their persistence. On the other hand, it is important for the prediction to be transparent for the instructor and students to effectively utilize the results of this prediction. Explainable Machine Learning models can effectively help…
Descriptors: Academic Achievement, Prediction, Models, Introductory Courses
Shen, Guohua; Yang, Sien; Huang, Zhiqiu; Yu, Yaoshen; Li, Xin – Education and Information Technologies, 2023
Due to the growing demand for information technology skills, programming education has received increasing attention. Predicting students' programming performance helps teachers realize their teaching effect and students' learning status in time to provide support for students. However, few of the existing researches have taken the code that…
Descriptors: Prediction, Programming, Student Characteristics, Profiles
Ouyang, Fan; Xu, Weiqi; Cukurova, Mutlu – International Journal of Computer-Supported Collaborative Learning, 2023
Collaborative problem solving (CPS) enables student groups to complete learning tasks, construct knowledge, and solve problems. Previous research has argued the importance of examining the complexity of CPS, including its multimodality, dynamics, and synergy from the complex adaptive systems perspective. However, there is limited empirical…
Descriptors: Artificial Intelligence, Learning Analytics, Cooperative Learning, Problem Solving
Nguyen, Ngoc Nhu; Nham, Tuan Phong; Takahashi, Yoshi – Policy Futures in Education, 2023
This research investigated the relationship between emotional intelligence of university students and their resilience ability during crisis: the pandemic of COVID-19. A large-scale quantitative approach was applied with a national survey in the midst of the fourth wave of COVID-19 outbreak in Vietnam. The research obtained data from 2252 students…
Descriptors: Emotional Intelligence, Resilience (Psychology), COVID-19, Pandemics
Goldstein, Yoav; Legewie, Nicolas M.; Shiffer-Sebba, Doron – Sociological Methods & Research, 2023
Video data offer important insights into social processes because they enable direct observation of real-life social interaction. Though such data have become abundant and increasingly accessible, they pose challenges to scalability and measurement. Computer vision (CV), i.e., software-based automated analysis of visual material, can help address…
Descriptors: Artificial Intelligence, Data Analysis, Interpersonal Relationship, Social Science Research
Jiang, Zhehan; Han, Yuting; Xu, Lingling; Shi, Dexin; Liu, Ren; Ouyang, Jinying; Cai, Fen – Educational and Psychological Measurement, 2023
The part of responses that is absent in the nonequivalent groups with anchor test (NEAT) design can be managed to a planned missing scenario. In the context of small sample sizes, we present a machine learning (ML)-based imputation technique called chaining random forests (CRF) to perform equating tasks within the NEAT design. Specifically, seven…
Descriptors: Test Items, Equated Scores, Sample Size, Artificial Intelligence

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