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22 pages, 485 KiB  
Article
Development and Validation of a Self-Assessment Tool for Convergence Competencies in Humanities, Arts, and Social Sciences for Sustainable Futures in the South Korean Context
by Hyojung Jung, Inyoung Song and Younghee Noh
Sustainability 2025, 17(15), 7131; https://doi.org/10.3390/su17157131 (registering DOI) - 6 Aug 2025
Abstract
Addressing global challenges such as climate change and inequality requires convergence competencies that enable learners to devise sustainable solutions. Such competencies have been emphasized in Science, Technology, Engineering, Mathematics (STEM) fields, but empirical research and assessment tools tailored to Humanities, Arts, and Social [...] Read more.
Addressing global challenges such as climate change and inequality requires convergence competencies that enable learners to devise sustainable solutions. Such competencies have been emphasized in Science, Technology, Engineering, Mathematics (STEM) fields, but empirical research and assessment tools tailored to Humanities, Arts, and Social Sciences (HASS) remain scarce. This study aimed to develop and validate a self-assessment tool to measure convergence competencies among HASS learners. A three-round Delphi survey with domain experts was conducted to evaluate and refine an initial pool of items. Items with insufficient content validity were revised or deleted, and all retained items achieved a Content Validity Ratio (CVR) of ≥0.800, with most scoring 1.000. The validated instrument was administered to 455 undergraduates participating in a convergence education program. Exploratory factor analysis identified five key dimensions: Convergent Commitment, Future Problem Awareness, Future Efficacy, Convergent Learning, and Multidisciplinary Inclusiveness, explaining 69.72% of the variance. Confirmatory factor analysis supported the model’s goodness-of-fit (χ2 (160) = 378.786, RMSEA = 0.054, CFI = 0.952), and the instrument demonstrated high internal consistency (Cronbach’s α = 0.919). The results confirm that the tool is both reliable and valid for diagnosing convergence competencies in HASS contexts, providing a practical framework for interdisciplinary learning and reflective engagement toward sustainable futures. Full article
(This article belongs to the Special Issue Sustainable Management for the Future of Education Systems)
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25 pages, 502 KiB  
Article
Passing with ChatGPT? Ethical Evaluations of Generative AI Use in Higher Education
by Antonio Pérez-Portabella, Mario Arias-Oliva, Graciela Padilla-Castillo and Jorge de Andrés-Sánchez
Digital 2025, 5(3), 33; https://doi.org/10.3390/digital5030033 - 6 Aug 2025
Abstract
The emergence of generative artificial intelligence (GenAI) in higher education offers new opportunities for academic support while also raising complex ethical concerns. This study explores how university students ethically evaluate the use of GenAI in three academic contexts: improving essay writing, preparing for [...] Read more.
The emergence of generative artificial intelligence (GenAI) in higher education offers new opportunities for academic support while also raising complex ethical concerns. This study explores how university students ethically evaluate the use of GenAI in three academic contexts: improving essay writing, preparing for exams, and generating complete essays without personal input. Drawing on the Multidimensional Ethics Scale (MES), the research assesses five philosophical frameworks—moral equity, relativism, egoism, utilitarianism, and deontology—based on a survey conducted among undergraduate social sciences students in Spain. The findings reveal that students generally view GenAI use as ethically acceptable when used to improve or prepare content, but express stronger ethical concerns when authorship is replaced by automation. Gender and full-time employment status also influence ethical evaluations: women respond differently than men in utilitarian dimensions, while working students tend to adopt a more relativist stance and are more tolerant of full automation. These results highlight the importance of context, individual characteristics, and philosophical orientation in shaping ethical judgments about GenAI use in academia. Full article
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35 pages, 3894 KiB  
Article
Building an Adaptive AI-Powered Higher Education Class for the Future of Engineering: A Case Study from NTUA
by Maria Karoglou, Ioana Ghergulescu, Marina Stramarkou, Christos Boukouvalas and Magdalyni Krokida
Appl. Sci. 2025, 15(15), 8524; https://doi.org/10.3390/app15158524 (registering DOI) - 31 Jul 2025
Viewed by 86
Abstract
This study presents the outcomes of the Erasmus+ European project Higher Education Classroom of the Future (HECOF), with a particular focus on chemical engineering education. In the digital era, the integration and advancement of artificial intelligence (AI) in higher education, especially in engineering, [...] Read more.
This study presents the outcomes of the Erasmus+ European project Higher Education Classroom of the Future (HECOF), with a particular focus on chemical engineering education. In the digital era, the integration and advancement of artificial intelligence (AI) in higher education, especially in engineering, are increasingly important. The main goal of the HECOF project is to establish a system of new higher education teaching practices and national reforms in education. This system has been developed and tested through an innovative personalized and adaptive method of teaching that exploited digital data from students’ learning activity in immersive environments, with the aid of computational analysis techniques from data science. The unit operations—extraction process course—a fundamental component of the chemical engineering curriculum, was selected as the case study for the development of the HECOF learning system. A group of undergraduate students evaluated the system’s usability and educational efficiency. The findings showed that the HECOF system contributed positively to students’ learning—although the extent of improvement varied among individuals—and was associated with a high level of satisfaction, suggesting that HECOF was effective in delivering a positive and engaging learning experience. Full article
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13 pages, 532 KiB  
Article
Medical and Biomedical Students’ Perspective on Digital Health and Its Integration in Medical Curricula: Recent and Future Views
by Srijit Das, Nazik Ahmed, Issa Al Rahbi, Yamamh Al-Jubori, Rawan Al Busaidi, Aya Al Harbi, Mohammed Al Tobi and Halima Albalushi
Int. J. Environ. Res. Public Health 2025, 22(8), 1193; https://doi.org/10.3390/ijerph22081193 - 30 Jul 2025
Viewed by 289
Abstract
The incorporation of digital health into the medical curricula is becoming more important to better prepare doctors in the future. Digital health comprises a wide range of tools such as electronic health records, health information technology, telemedicine, telehealth, mobile health applications, wearable devices, [...] Read more.
The incorporation of digital health into the medical curricula is becoming more important to better prepare doctors in the future. Digital health comprises a wide range of tools such as electronic health records, health information technology, telemedicine, telehealth, mobile health applications, wearable devices, artificial intelligence, and virtual reality. The present study aimed to explore the medical and biomedical students’ perspectives on the integration of digital health in medical curricula. A cross-sectional study was conducted on the medical and biomedical undergraduate students at the College of Medicine and Health Sciences at Sultan Qaboos University. Data was collected using a self-administered questionnaire. The response rate was 37%. The majority of respondents were in the MD (Doctor of Medicine) program (84.4%), while 29 students (15.6%) were from the BMS (Biomedical Sciences) program. A total of 55.38% agreed that they were familiar with the term ‘e-Health’. Additionally, 143 individuals (76.88%) reported being aware of the definition of e-Health. Specifically, 69 individuals (37.10%) utilize e-Health technologies every other week, 20 individuals (10.75%) reported using them daily, while 44 individuals (23.66%) indicated that they never used such technologies. Despite having several benefits, challenges exist in integrating digital health into the medical curriculum. There is a need to overcome the lack of infrastructure, existing educational materials, and digital health topics. In conclusion, embedding digital health into medical curricula is certainly beneficial for creating a digitally competent healthcare workforce that could help in better data storage, help in diagnosis, aid in patient consultation from a distance, and advise on medications, thereby leading to improved patient care which is a key public health priority. Full article
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34 pages, 2825 KiB  
Article
A Verilog Programming Learning Assistant System Focused on Basic Verilog with a Guided Learning Method
by Pin-Chieh Hsieh, Tzu-Lun Fang, Shaobo Jin, Yuyan Wang, Nobuo Funabiki and Yu-Cheng Fan
Future Internet 2025, 17(8), 333; https://doi.org/10.3390/fi17080333 - 25 Jul 2025
Viewed by 233
Abstract
With continuous advancements in semiconductor technology, mastering efficient designs of high-quality and advanced chips has become an important part of science and technology education. Chip performances will determine the futures of various aspects of societies. However, novice students often encounter difficulties in learning [...] Read more.
With continuous advancements in semiconductor technology, mastering efficient designs of high-quality and advanced chips has become an important part of science and technology education. Chip performances will determine the futures of various aspects of societies. However, novice students often encounter difficulties in learning digital chip designs using Verilog programming, a common hardware design language. An efficient self-study system for supporting them that can offer various exercise problems, such that any answer is marked automatically, is in strong demand. In this paper, we design and implement a web-based Verilog programming learning assistant system (VPLAS), based on our previous works on software programming. Using a heuristic and guided learning method, VPLAS leads students to learn the basic circuit syntax step by step, until they acquire high-quality digital integrated circuit design abilities through self-study. For evaluation, we assign the proposal to 50 undergraduate students at the National Taipei University of Technology, Taiwan, who are taking the introductory chip-design course, and confirm that their learning outcomes using VPLAS together are far better than those obtained when following a traditional method. In our final statistics, students achieved an average initial accuracy rate of over 70% on their first attempts at answering questions after learning through our website’s tutorials. With the help of the system’s instant automated grading and rapid feedback, their average accuracy rate eventually exceeded 99%. This clearly demonstrates that our system effectively enables students to independently master Verilog circuit knowledge through self-directed learning. Full article
(This article belongs to the Topic Advances in Online and Distance Learning)
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21 pages, 2852 KiB  
Article
Innovative Hands-On Approach for Magnetic Resonance Imaging Education of an Undergraduate Medical Radiation Science Course in Australia: A Feasibility Study
by Curtise K. C. Ng, Sjoerd Vos, Hamed Moradi, Peter Fearns, Zhonghua Sun, Rebecca Dickson and Paul M. Parizel
Educ. Sci. 2025, 15(7), 930; https://doi.org/10.3390/educsci15070930 - 21 Jul 2025
Viewed by 271
Abstract
As yet, no study has investigated the use of a research magnetic resonance imaging (MRI) scanner to support undergraduate medical radiation science (MRS) students in developing their MRI knowledge and practical skills (competences). The purpose of this study was to test an innovative [...] Read more.
As yet, no study has investigated the use of a research magnetic resonance imaging (MRI) scanner to support undergraduate medical radiation science (MRS) students in developing their MRI knowledge and practical skills (competences). The purpose of this study was to test an innovative program for a total of 10 s- and third-year students of a MRS course to enhance their MRI competences. The study involved an experimental, two-week MRI learning program which focused on practical MRI scanning of phantoms and healthy volunteers. Pre- and post-program questionnaires and tests were used to evaluate the competence development of these participants as well as the program’s educational quality. Descriptive statistics, along with Wilcoxon signed-rank and paired t-tests, were used for statistical analysis. The program improved the participants’ self-perceived and actual MRI competences significantly (from an average of 2.80 to 3.20 out of 5.00, p = 0.046; and from an average of 34.87% to 62.72%, Cohen’s d effect size: 2.53, p < 0.001, respectively). Furthermore, they rated all aspects of the program’s educational quality highly (mean: 3.90–4.80 out of 5.00) and indicated that the program was extremely valuable, very effective, and practical. Nonetheless, further evaluation should be conducted in a broader setting with a larger sample size to validate the findings of this feasibility study, given the study’s small sample size and participant selection bias. Full article
(This article belongs to the Special Issue Technology-Enhanced Nursing and Health Education)
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17 pages, 265 KiB  
Article
Perceptions, Ethical Challenges and Sustainable Integration of Generative AI in Health Science Education: A Cross-Sectional Study
by Mirko Prosen and Sabina Ličen
Sustainability 2025, 17(14), 6546; https://doi.org/10.3390/su17146546 - 17 Jul 2025
Viewed by 385
Abstract
Generative artificial intelligence (AI) is changing higher education. Understanding students’ perceptions, usage behaviour and ethical concerns is crucial for the responsible and sustainable use of AI in the academic environment. The aim of this study was to explore the perceptions, experiences and challenges [...] Read more.
Generative artificial intelligence (AI) is changing higher education. Understanding students’ perceptions, usage behaviour and ethical concerns is crucial for the responsible and sustainable use of AI in the academic environment. The aim of this study was to explore the perceptions, experiences and challenges of health sciences students in relation to the use of generative AI in their academic learning. A descriptive cross-sectional survey was conducted with 397 students enrolled in four undergraduate health-related degree programmes in Slovenia, including nursing, physiotherapy, dietetics and applied kinesiology. The data was collected using a validated 27-point scale. Students were generally favourable towards AI, especially in terms of its perceived usefulness, integration into their daily study routine and ethical considerations. Regression analyses revealed that frequency of AI use, duration of use, self-reported skill level and confidence in using AI significantly predicted perceived usefulness. Gender differences were found, with male students reporting higher perceived usefulness and fewer concerns. Students recognised the potential of generative AI but emphasised the importance of ethical guidance, digital literacy and equal access. Institutions should prioritise structured training and inclusive strategies to ensure meaningful, sustainable and responsible integration of AI into health education. Full article
23 pages, 3820 KiB  
Article
A Fundamental Statistics Self-Learning Method with Python Programming for Data Science Implementations
by Prismahardi Aji Riyantoko, Nobuo Funabiki, Komang Candra Brata, Mustika Mentari, Aviolla Terza Damaliana and Dwi Arman Prasetya
Information 2025, 16(7), 607; https://doi.org/10.3390/info16070607 - 15 Jul 2025
Viewed by 340
Abstract
The increasing demand for data-driven decision making to maintain the innovations and competitiveness of organizations highlights the need for data science educations across academia and industry. At its core is a solid understanding of statistics, which is necessary for conducting a thorough analysis [...] Read more.
The increasing demand for data-driven decision making to maintain the innovations and competitiveness of organizations highlights the need for data science educations across academia and industry. At its core is a solid understanding of statistics, which is necessary for conducting a thorough analysis of data and deriving valuable insights. Unfortunately, conventional statistics learning often lacks practice in real-world applications using computer programs, causing a separation between conceptual knowledge of statistics equations and their hands-on skills. Integrating statistics learning into Python programming can convey an effective solution for this problem, where it has become essential in data science implementations, with extensive and versatile libraries. In this paper, we present a self-learning method for fundamental statistics through Python programming for data science studies. Unlike conventional approaches, our method integrates three types of interactive problems—element fill-in-blank problem (EFP), grammar-concept understanding problem (GUP), and value trace problem (VTP)—in the Programming Learning Assistant System (PLAS). This combination allows students to write code, understand concepts, and trace the output value while obtaining instant feedback so that they can improve retention, knowledge, and practical skills in learning statistics using Python programming. For evaluations, we generated 22 instances using source codes for fundamental statistics topics, and assigned them to 40 first-year undergraduate students at UPN Veteran Jawa Timur, Indonesia. Statistics analytical methods were utilized to analyze the student learning performances. The results show that a significant correlation (ρ<0.05) exists between the students who solved our proposal and those who did not. The results confirm that it can effectively assist students in learning fundamental statistics self-learning using Python programming for data science implementations. Full article
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23 pages, 286 KiB  
Article
Building Successful STEM Partnerships in Education: Strategies for Enhancing Collaboration
by Andrea C. Borowczak, Trina Johnson Kilty and Mike Borowczak
Educ. Sci. 2025, 15(7), 893; https://doi.org/10.3390/educsci15070893 - 12 Jul 2025
Viewed by 408
Abstract
This article presents a comparison of two qualitative case studies. The first case study is a partnership group involving two urban secondary school teachers working with one engineer and one education faculty member where they implemented several science, technology, engineering, and mathematics (STEM) [...] Read more.
This article presents a comparison of two qualitative case studies. The first case study is a partnership group involving two urban secondary school teachers working with one engineer and one education faculty member where they implemented several science, technology, engineering, and mathematics (STEM) lessons over the course of an academic year. The second case study is a partnership group involving undergraduate college students working together to build a data collection device attached to a high-altitude balloon to answer a scientific question or solve an engineering problem and translate the project into engaging lessons for a K-12/secondary student audience. The studies employed a socio-cultural theoretical framework as the lens to examine the individuals’ perspectives, experiences, and engineering meaning-making processes, and to consider what these meant to the partnership itself. The methods included interviews, focus groups, field notes, and artifacts. The analysis involved multi-level coding. The findings indicated that the strength of the partnership (pre, little p, or big P) among participants influenced the strength of the secondary engineering lessons. The partnership growth implications in terms of K-12/secondary and collegiate engineering education included the engineering lesson strength, partnership, and engineering project sustainability The participant partnership meanings revolved around lesson creation, incorporating engineering ideas into the classroom, increasing communication, and increasing secondary students’ learning, while tensions arose from navigating (not quite negotiating) roles as a team. A call for attention to school–university partnerships and the voices heard in engineering partnership building are included since professional skills are becoming even more important due to advances in artificial intelligence (AI) and other technologies. Full article
18 pages, 1251 KiB  
Article
From Classroom to Community: Evaluating Data Science Practices in Education and Social Justice Projects
by Marc T. Sager, Jeanna R. Wieselmann and Anthony J. Petrosino
Educ. Sci. 2025, 15(7), 878; https://doi.org/10.3390/educsci15070878 - 9 Jul 2025
Viewed by 462
Abstract
Critical data literacy (CDL) has emerged as a crucial component in data science education, transcending traditional disciplinary boundaries. Promoting CDL requires collaborative approaches to enhance learners’ skills in data science, going beyond mere quantitative reasoning to encompass a comprehensive understanding of data workflows [...] Read more.
Critical data literacy (CDL) has emerged as a crucial component in data science education, transcending traditional disciplinary boundaries. Promoting CDL requires collaborative approaches to enhance learners’ skills in data science, going beyond mere quantitative reasoning to encompass a comprehensive understanding of data workflows and tools. Despite the growing literature on CDL, there is still a need to explore how students use data science practices for supporting the learning of CDL throughout a summer-long data science program. Drawing on situative perspectives of learning, we utilize a descriptive case study to address our research question: How do data science practices taught in a classroom setting differ from those enacted in real-world social justice projects? Key findings reveal that while the course focused on abstract principles and basic technical skills, the Food Justice Project provided students with a more applied understanding of data tools, ethics, and exploration. Through the project, students demonstrated a deeper engagement with CDL, addressing real-world issues through detailed data analysis and ethical considerations. This manuscript adds to the literature within data science education and has the potential to bridge the gap between theoretical knowledge and practical application, preparing students to address real-world data science challenges through their coursework. Full article
(This article belongs to the Special Issue Cultivating Teachers for STEAM Education)
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7 pages, 771 KiB  
Proceeding Paper
Dynamic Oral English Assessment System Based on Large Language Models for Learners
by Jiaqi Yu and Hafriza Binti Burhanudeen
Eng. Proc. 2025, 98(1), 32; https://doi.org/10.3390/engproc2025098032 - 7 Jul 2025
Viewed by 265
Abstract
The rapid development of science and technology enables technological innovations to change the way of English oral learning. Based on the use of a large language model (LLM), we developed a novel dynamic evaluation system for oral English, LLM-DAELSL, which combines daily oral [...] Read more.
The rapid development of science and technology enables technological innovations to change the way of English oral learning. Based on the use of a large language model (LLM), we developed a novel dynamic evaluation system for oral English, LLM-DAELSL, which combines daily oral habits and a textbook outline. The model integrates commonly used vocabulary from everyday social speech and authoritative prior knowledge, such as oral language textbooks. It also combines traditional large-scale semantic models with probabilistic algorithms to serve as an oral assessment tool for undergraduate students majoring in English-related fields in universities. The model provides corrective feedback to effectively enhance the proficiency of English learners through guided training at any time and place. The technological principle of the model involves inputting prior template knowledge into the language model for reverse guidance and utilizing the textbooks provided by China’s Ministry of Education. The model facilitates the practice and evaluation of pronunciation, grammar, vocabulary, and fluency. The six-month tracking results showed that the oral proficiency of the system learners was significantly improved in the four aspects, which provides a reference for other language learning method developments. Full article
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15 pages, 575 KiB  
Article
Psychometric Properties of the Science Self-Efficacy Scale for STEMM Undergraduates
by Jayashri Srinivasan, Krystle P. Cobian and Minjeong Jeon
Eur. J. Investig. Health Psychol. Educ. 2025, 15(7), 124; https://doi.org/10.3390/ejihpe15070124 - 4 Jul 2025
Viewed by 341
Abstract
Biomedical research training initiatives need rigorous evaluation to achieve national goals of supporting a robust workforce in the biomedical sciences. Higher science self-efficacy is associated with the likelihood of pursuing a science-related research career, but we know little about the psychometric properties of [...] Read more.
Biomedical research training initiatives need rigorous evaluation to achieve national goals of supporting a robust workforce in the biomedical sciences. Higher science self-efficacy is associated with the likelihood of pursuing a science-related research career, but we know little about the psychometric properties of this construct. In this study, we report on a comprehensive validation study of the Science Self-Efficacy Scale using a robust sample of 10,029 undergraduates enrolled across 11 higher education institutions that were part of a biomedical training initiative funded by the National Institutes of Health in the United States. We found the scale to be unidimensional with an Omega hierarchical (ωh) reliability coefficient of 0.86 and a marginal reliability of 0.91. Within the item response theory framework, we did not detect variation in item parameters across undergraduates’ race/ethnicity; however, one item had parameters that varied across gender identity. We determined that the Science Self-Efficacy Scale can be employed across undergraduates enrolled in science, and researchers can use the scale across a diverse group of students. Implications include ensuring that the scale functions consistently across diverse populations, enhancing the validity of conclusions that can be drawn from survey data analysis. Validating this construct with item response theory models strengthens its use for future research. Full article
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20 pages, 540 KiB  
Article
Examining Undergraduates’ Intentions to Pursue a Science Career: A Longitudinal Study of a National Biomedical Training Initiative
by Jayashri Srinivasan, Krystle P. Cobian, Hector V. Ramos, Christina A. Christie, Catherine M. Crespi and Teresa Seeman
Educ. Sci. 2025, 15(7), 825; https://doi.org/10.3390/educsci15070825 - 28 Jun 2025
Viewed by 409
Abstract
Disparities in the participation of individuals from historically excluded groups in science careers persist, particularly at advanced career stages. In response to this challenge, the National Institutes of Health developed the BUilding Infrastructure Leading to Diversity (BUILD) initiative, aimed at undergraduate institutions to [...] Read more.
Disparities in the participation of individuals from historically excluded groups in science careers persist, particularly at advanced career stages. In response to this challenge, the National Institutes of Health developed the BUilding Infrastructure Leading to Diversity (BUILD) initiative, aimed at undergraduate institutions to examine evidence-based strategies to engage and retain students across science-related fields. In this longitudinal study, we used propensity score matching and mixed-effects logistic regression models to examine the effects of BUILD on undergraduates’ intentions to pursue science-related research careers. The results indicate that students who participated in BUILD are four times more likely to pursue a science-related research career in comparison to their non-BUILD counterparts. We also discuss and present the need to incorporate research training and mentorship to promote a diverse scientific workforce. Full article
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12 pages, 2784 KiB  
Article
Food Systems in the Curriculum of American Undergraduate Sustainability and Environmental Science/Studies Programs
by Joseph Kantenbacher, Ethan Strom, Vivian Omondi, Sharad Chowdhury and Sonja Braucht
Sustainability 2025, 17(13), 5906; https://doi.org/10.3390/su17135906 - 26 Jun 2025
Viewed by 967
Abstract
Food systems are crucial components of sustainable development challenges, from hunger to climate change to responsible patterns of production and consumption. Students in environmental degree programs would be better equipped to contribute to sustainability solutions, with insight into the production, processing, distribution, consumption, [...] Read more.
Food systems are crucial components of sustainable development challenges, from hunger to climate change to responsible patterns of production and consumption. Students in environmental degree programs would be better equipped to contribute to sustainability solutions, with insight into the production, processing, distribution, consumption, and disposal of food. In this paper, we aim to understand how sustainability and environmentally oriented programs (SEOPs) in American higher education institutions are preparing students to understand food systems, examining how frequently food systems classes are present in their curricula. Our study cataloged the curricular offerings and requirements of 449 undergraduate SEOPs in the United States for the 2024–2025 academic year. We find that 44% of SEOPs include food systems courses as electives in their programs of study, but only 9% make a food systems course a requirement. These findings suggest that food systems awareness may be deficient in college-trained sustainable development workers, potentially impeding efforts to achieve Sustainable Development Goals. This study offers a method for assessing the curricular integration of food systems content and provides a benchmark for those aiming to align academic programs with global sustainability targets. Integrating food systems courses into SEOP curricula can improve preparation for addressing interconnected sustainability challenges. Full article
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25 pages, 1021 KiB  
Article
A Conceptual Framework for Student Retention in an Advanced Financial Accounting Course: Traditional vs. Blended Learning Environments
by Chara Kottara, Sofia Asonitou and Dimitra Kavalieraki-Foka
Trends High. Educ. 2025, 4(3), 30; https://doi.org/10.3390/higheredu4030030 - 25 Jun 2025
Viewed by 1031
Abstract
At the beginning of the 21st century, rapid technological developments significantly impacted the field of education. As a result, university professors in recent years have been constantly searching and implementing teaching methods, such as blended learning, to increase the interest of their students [...] Read more.
At the beginning of the 21st century, rapid technological developments significantly impacted the field of education. As a result, university professors in recent years have been constantly searching and implementing teaching methods, such as blended learning, to increase the interest of their students and retain them in their courses. It is a matter of many academic discussions to create educational practices to reduce student dropout, especially in social sciences courses that are considered by students to be difficult subjects, such as accounting. The blended learning approach is based on constructivist theory and specifically on the Community of Inquiry model, where the educational experience of students is related to social, cognitive, and didactic presence, and it is orientated towards a more student-centred approach that maximises retention rates. The present study employs an exploratory blended-methods design. A questionnaire and individual interviews of students were used to collect data. The study was carried out in the context of an Advanced Financial Accounting course at a Greek university, through the implementation of an experiment with undergraduate students. Important findings include higher retention rates of undergraduate accounting students in the blended class compared to the traditional one, as the redesigning of content for the needs of blended learning, the incorporation of videos, the development of group work, and the good organisation of the course constitute the optimal mix for reducing student attrition. Full article
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