Enhancing Accessibility to Analytics Courses in Higher Education through AI, Simulation, and e-Collaborative Tools
Abstract
:1. Introduction
2. Methodology
3. Literature Review
3.1. The Role of Accessibility in Education
- Language barriers: One of the primary challenges faced by students from non-native language backgrounds is language barriers to comprehension and expression. These students often struggle to keep pace with their peers in understanding instructional materials and participating in classroom discussions. To address this issue, research advocates for the implementation of language support services, such as ESL (English as a Second Language) programs, which can provide tailored assistance to help these students develop proficiency in the language of instruction [7].
- Previous educational quality: The variability in the quality of prior education can result in significant gaps in foundational knowledge and skills among students. The student demographics in online education have changed, with of online learners being over the age of 30 [8]. Those who have experienced subpar educational settings may struggle to meet the academic demands of their new environments [9]. To improve the accessibility of education, AI technology is widely used to help students improve teaching effectiveness and learning experience. Diagnostic assessments [10] can help identify these gaps early on, allowing educators to develop personalized learning plans tailored to each student’s needs.
- Learning disabilities and special needs: Students with learning disabilities or special needs require specific accommodations and tailored instructional methods to succeed academically. These students face unique challenges that standard educational practices may not adequately address [11]. The impact of the four most common disabilities on learning and the common solutions are illustrated in Figure 2.
- Cultural differences: Students from diverse cultural backgrounds may find it challenging to fulfill the social and academic expectations of their new settings [12]. Culturally responsive teaching practices, which include incorporating diverse cultural perspectives into the curriculum and promoting an inclusive school culture, can help mitigate these issues. By valuing and respecting cultural diversity, educators can create a more welcoming and supportive environment for all students. This view aligns with the role of open educational resources (OERs) in promoting inclusive learning. Hockings et al. [13] highlighted that OERs provide flexible and accessible learning materials that cater to diverse student needs.
- Socioeconomic disparities: The uneven distribution of resources is a serious impediment to the accessibility of education. In Norway and Switzerland, of students are fortunate enough to have access to electronic devices, whereas in Indonesia, only of students have such access [14]. Students without available resources face a host of socioeconomic challenges that affect their educational experiences. These students often lack access to essential resources such as technology, learning materials, and extracurricular opportunities, which are crucial for holistic development [15]. To combat these disparities, schools can implement financial aid programs that alleviate the economic burden on families. Providing free or low-cost learning materials and creating supportive environments where all students have equal access to educational resources can significantly enhance the learning outcomes for socioeconomically disadvantaged students.
3.2. The Use of Technology in Teaching Analytical Courses
4. AISEC Tools for Teaching Analytical Courses
4.1. AI Tools for Teaching Analytical Courses
4.1.1. Various AI Tools Used for Teaching Analytics
4.1.2. AI-Based Language Support Tools for Non-Native Speakers
4.2. Simulation Tools for Teaching Analytical Courses
4.2.1. Discussion of How Simulation Software Enhances Experiential Learning
4.2.2. Examples of Simulation-Based Exercises for Teaching Statistical and Analytical Concepts
4.3. The Use of e-Collaborative Tools for Teaching Analytical Courses
4.3.1. Discussion of Virtual Collaboration Platforms for Group Projects
4.3.2. Exploration of Accessibility Features in Platforms like Teams and Google Meet
5. Experiences at Universitat Politècnica de València
5.1. Fishbanks: A Simulation for Sustainable Resource Management
5.2. Markstrat: A Simulation for Marketing Management
5.3. Gestionet: A Finance Simulation for Financial Management
5.4. Implexa: An Evolutive Beer Game Simulation for Logistics
5.5. LLOG VR: Virtual Reality for Logistics
5.6. Discussion on Accessibility and Usability in UPV
6. Experiences at University College Dublin
6.1. Turnitin and ChatGPT: AI Tools for Assisting Search
6.2. Solver and LINDO Simulation Tools for Optimization and Analytics
6.3. Ft.Com: A Stock Trading Simulation for Technology Consulting
6.4. Discussion on Accessibility and Usability in UCD
7. Experiences at Universidade Aberta
7.1. Simulation for Decision-Making Optimization
7.2. Open Class Initiative
7.3. Discussion on Accessibility and Usability at Universidade Aberta
8. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Course | Tool | Reference |
---|---|---|
Big Data Analytics in MIS | Apache Hadoop | Asamoah et al. [23] |
Tableau | ||
Gephi | ||
Big Data Analytics for Upper-Level Computer Science | Hadoop MapReduce | Eckroth [24] |
Spark | ||
Hive | ||
Google BigQuery | ||
Marketing Analytics | TensorFlow | Allil [25] |
Introductory Java Programming | AI Chatbot | Maher et al. [27] |
GitHub Copilot |
Simulation Tool | Learning Context | Type of Simulation | Case Study |
---|---|---|---|
WITNESS | Logistics | Discrete-event simulation | Tvrdoň and Jurásková [38] |
The Beer Game | Logistics | System dynamics simulation | Jackson and Taylor [39] |
SimEd | Statistics | Discrete-event simulation | Doddavaram and Corlu [41] |
PhET Interactive Simulations | Physics, Biology, Chemistry | Interactive simulation | Perkins et al. [42] |
JADE | Engineering, Social and Computer Science | Agent-based simulation | Sandita and Popirlan [43] |
Simulink | Engineering, Control Systems | Model-based design simulation | Pires and Silva [44] |
NetLogo | Economics, Computer Science, Mathematics | Agent-based simulation | Bernát [45] |
AnyLogic | Business, Logistics | Multi-method simulation | Yalin et al. [46] |
Simul8 | Operations Management, Industrial Engineering | Discrete-event simulation | Chwif and Pereira [47] |
Wolfram | Mathematics, Engineering | Mathematical simulation | Barba-Guaman et al. [48] |
GAMS | Operations Research, Engineering | Optimization and mathematical simulation | Velázquez-Iturbide et al. [49] |
SIMIO | Logistics, Economics, Industrial Engineering | Discrete-event simulation | Akundi and Edinbarough [50] |
Platform | Key Features | Link | Author Source |
---|---|---|---|
Microsoft Teams | Chat, video conferencing, voice calls, and simultaneous document editing. | https://www.microsoft.com/en-us/microsoft-teams/group-chat-software | Febriana [62] |
Google Meet | Scheduling, HD video, audio, screen sharing, and document collaboration. | https://meet.google.com | Gauthier and Husain [63] |
Zoom | Remote learning, breakout rooms, polling, and interactive whiteboards. | https://zoom.us | Biletska et al. [64] |
Notion | Write, plan, and organize learning activities content. | https://www.notion.so | Osawa [65] |
Cisco WebEx | High-quality video and audio conferencing, screen sharing, virtual whiteboard, and in-meeting file sharing. | https://www.webex.com | Lopez et al. [66] |
VizGroup | Visual data collaboration and analysis, data visualization, team brainstorming sessions, and project presentations. | https://www.vizgroup.com | Tang et al. [67] |
Accessibility Feature | Microsoft Teams | Google Meet | Zoom | Cisco WebEx | VizGroup |
---|---|---|---|---|---|
Live Captions | Yes | Yes | Yes | Yes | Yes |
Screen Reader Support | Yes | Limited | Yes | Yes | Limited |
Keyboard Shortcuts | Yes | Yes | Yes | Yes | Yes |
High Contrast Themes | Yes | Yes | Yes | Yes | Yes |
Immersive Reader | Yes | No | No | No | No |
Customized User Interface | Limited | Limited | Limited | Limited | Limited |
Integration with Assistive Technologies | Yes | Limited | Yes | Yes | Limited |
WCAG 2.1 Compliance Level | AA | AA | AA | AA | AA |
Round 1 | Round 2 | Variation | |
---|---|---|---|
Total Cost | EUR 83,255.57 | EUR 71,770.54 | −14% |
% of Demand Satisfied | 75.43% | 100% | 33% |
Lead-time | 9.3 s | 3.6 s | −61% |
Average Stock | 391.3 units | 98 units | −75% |
Total Orders | 2698 units | 3730 units | 38% |
Total Production | 1751 units | 3740 units | 114% |
Total Purchases | 4693 units | 7480 units | 59% |
Service Cost | EUR 60.4 | EUR 19.25 | −68% |
Demand Amplification Ratio | 0.47 | 1.02 | 117% |
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Osorio, C.; Fuster, N.; Chen, W.; Men, Y.; Juan, A.A. Enhancing Accessibility to Analytics Courses in Higher Education through AI, Simulation, and e-Collaborative Tools. Information 2024, 15, 430. https://doi.org/10.3390/info15080430
Osorio C, Fuster N, Chen W, Men Y, Juan AA. Enhancing Accessibility to Analytics Courses in Higher Education through AI, Simulation, and e-Collaborative Tools. Information. 2024; 15(8):430. https://doi.org/10.3390/info15080430
Chicago/Turabian StyleOsorio, Celia, Noelia Fuster, Wenwen Chen, Yangchongyi Men, and Angel A. Juan. 2024. "Enhancing Accessibility to Analytics Courses in Higher Education through AI, Simulation, and e-Collaborative Tools" Information 15, no. 8: 430. https://doi.org/10.3390/info15080430
APA StyleOsorio, C., Fuster, N., Chen, W., Men, Y., & Juan, A. A. (2024). Enhancing Accessibility to Analytics Courses in Higher Education through AI, Simulation, and e-Collaborative Tools. Information, 15(8), 430. https://doi.org/10.3390/info15080430