Review Article
The Impact of Learning Technologies on Entrepreneurial Education: The Transition from Communication to Cognition
Sichu LIU and Hongyi SUN*
Department of Systems Engineering, City University of Hong Kong, Hong Kong, China
Hongyi SUN, Department of Systems Engineering, City University of Hong Kong, Hong Kong, China
Received Date:November 08, 2025; Published Date:November 17, 2025
Abstract
This comprehensive review examines the transformative impact of learning technologies on entrepreneurial education, tracing the evolution from communication-focused tools to cognitive-enhancing systems. By analysing the progression from basic video conferencing platforms and Learning Management Systems (LMS) to advanced artificial intelligence (AI) and adaptive learning technologies, this paper explores how technological advancements have reshaped pedagogical approaches, learning outcomes, and skill development in entrepreneurship education. The integration of AI technologies represents a paradigm shift from technology-as-communication-channel to technology-as-cognitive-partner, with profound implications for personalized learning, educational scalability, and entrepreneurial skill acquisition.
Introduction
The Changing Landscape of Entrepreneurial Education
Entrepreneurial education has undergone significant transformation over the past decade, accelerated by technological advancements and changing market demands. The traditional model of entrepreneurship education, characterized by case studies, business plan development, and classroom lectures, has evolved to incorporate increasingly sophisticated learning technologies. This evolution represents more than just technological adoption—it signifies a fundamental shift in how entrepreneurial skills are developed, practiced, and assessed.
The research by Liu et al. [1] provides a crucial foundation for understanding this evolution, demonstrating how e-learning technologies significantly impact entrepreneurial skill development across three key domains: personal skills, product skills, and business skills. However, their study primarily focuses on conventional e-learning technologies, leaving room for exploration of how emerging cognitive technologies are further transforming educational outcomes. This review extends their findings by examining the continuum from communication technologies to intelligent learning systems, with specific focus on entrepreneurship education.
The transition from communication to cognition in learning technologies represents a movement from tools that facilitate information exchange to systems that enhance thinking processes, personalize learning pathways, and provide intelligent feedback This evolution has profound implications for how we conceptualize entrepreneurship education, particularly given the field’s requirement for complex skill integration, adaptive thinking, and practical application.
Theoretical Foundations: From Social Learning to Cognitive Enhancement Social Learning Theory and Communication Technologies
The initial phase of technology integration in entrepreneurial
education was heavily influenced by social learning theory, which
emphasizes learning through observation, imitation, and modelling.
Communication technologies like Zoom, discussion forums, and
collaborative platforms enabled these social learning processes in
digital environments. These tools facilitated:
• Observation of expert entrepreneurial behaviours
• Peer-to-peer learning and modelling
• Collaborative problem-solving
• Social reinforcement of learning
The Liu et al. study demonstrated that these communicationfocused technologies significantly supported the development of personal skills (communication, leadership, responsibility) and business skills (business planning, marketing, financial planning), validating the importance of social learning mechanisms in entrepreneurial education.
Cognitive Load Theory and Technology Design
As learning technologies evolved, cognitive load theory became
increasingly relevant in designing effective educational tools. This
theory suggests that working memory has limited capacity, and
instructional design should optimize the allocation of cognitive
resources. Advanced learning technologies address cognitive load
through:
• Chunking complex entrepreneurial concepts
• Providing worked examples and scaffolding
• Minimizing extraneous cognitive load
• Enhancing germane load through effective design
The transition to cognitive technologies represents a shift from simply delivering content to optimizing how entrepreneurial knowledge is processed, stored, and retrieved.
The Communication Era: Foundation Technologies in Entrepreneurial Education Learning Management Systems: Structural Infrastructure
Learning Management Systems have served as the foundational infrastructure for digital entrepreneurial education since the early 2000s. Platforms like Canvas, Moodle, and Blackboard provided the initial framework for organizing course materials, submitting assignments, and facilitating basic instructor-student communication. The research by Liu et al. identified Canvas as a fundamental component of their e-learning technology framework, though interestingly noted that its common usage led to limited variance in their study results.
LMS platforms established crucial precedents for digital
entrepreneurship education:
• Standardization of entrepreneurial content delivery
• Centralization of business planning resources
• Basic tracking of student progress in skill development
• Foundation for asynchronous learning and flexibility
However, these systems primarily functioned as digital repositories and organizational tools rather than active learning enhancers. Their limitations became apparent as entrepreneurship education demanded more dynamic interaction and practical skill development.
Video Communication Platforms: Enabling Real-time Interaction
Zoom, Microsoft Teams, and similar video conferencing tools filled a critical gap by enabling real-time, face-to-face interaction essential for entrepreneurial education. The Liu et al. study found that Zoom-based activities—particularly attending live lectures, reviewing recorded sessions, and using chat features—showed significant positive loadings in their e-learning technology construct.
Video platforms provided essential elements missing from
traditional LMS:
• Real-time pitch practice and immediate feedback
• Visual and social cues in entrepreneurial communication
• Spontaneous discussion and collaborative problem-solving
• Sense of community and entrepreneurial networking
The research demonstrated that these communication technologies significantly supported the development of personal skills (communication, leadership, responsibility) and business skills (business planning, marketing, financial planning). However, their impact on product skills was comparatively lower, suggesting limitations in teaching hands-on, creative capabilities through communication-focused technologies.
The Transition Phase: Integrated Technology Ecosystems
The period from 2020-2023 witnessed an important transition from single-platform dependency to integrated technology ecosystems. Entrepreneurship educators began combining communication tools with collaborative platforms, social media, and specialized educational software to create more comprehensive learning experiences.
Multi-Technology Integration
The Liu et al. study captured this transition phase by measuring the use of multiple technologies simultaneously: Zoom for lectures, Canvas for materials, email for communication, social media (WeChat, WhatsApp) for group work, and internet searching for information. This multi-technology approach reflected an emerging understanding that no single platform could address all entrepreneurial educational needs.
Key developments during this phase included:
• Platform Specialization: Different technologies serving
specific pedagogical purposes in entrepreneurship training
• Student-Driven Technology Adoption: Entrepreneurial
learners combining tools based on personal learning
preferences and project needs
• Enhanced Collaboration: Social media and messaging apps
facilitating continuous entrepreneurial team work
• Flexible Learning Pathways: Blended synchronous and
asynchronous learning opportunities accommodating
entrepreneurial schedules
Emerging Limitations and Challenges
Despite these advancements, the transition phase revealed
significant challenges for entrepreneurial education:
• Technology Overload: The cognitive burden of managing
multiple platforms and interfaces while developing complex
entrepreneurial skills
• Skill Development Gaps: Communication technologies’
limited effectiveness in teaching hands-on product
development capabilities
• Assessment Challenges: Difficulties in evaluating practical
entrepreneurial skills through digital means
• Integration Complexity: Lack of seamless connection
between different technological tools
The Liu et al. study highlighted these challenges through their findings about product skills, suggesting that communicationfocused technologies had limited effectiveness in teaching creative capabilities essential for entrepreneurship.
The Cognitive Revolution: AI-Enhanced Entrepreneurial Learning Intelligent Tutoring Systems and Adaptive Learning
The emergence of AI-powered educational technologies represents a fundamental shift from tools that facilitate communication to systems that enhance cognitive processes. Intelligent tutoring systems analyse student performance, identify knowledge gaps, and provide personalized learning pathways— capabilities far beyond traditional LMS and communication platforms.
Key advancements include:
• Personalized Entrepreneurial Learning Paths: AI
algorithms adapting content difficulty and sequence based on
individual performance and entrepreneurial interests
• Real-time Skill Assessment: Continuous evaluation of
entrepreneurial competencies without formal testing
• Predictive Analytics: Identifying at-risk entrepreneurial
students and providing early interventions
• Natural Language Processing: Enabling sophisticated
feedback on business communications and pitches
While the Liu et al. study mentioned technologies like “Alchat” (AI chat), their research primarily captured the early stages of this transition. Subsequent developments have seen AI become increasingly integrated into mainstream entrepreneurial education.
Cognitive Enhancement through AI Technologies
AI technologies enhance cognitive processes in entrepreneurial
education through:
• Metacognitive Development: AI systems that help students
understand their own thinking patterns and learning processes
• Pattern Recognition: Machine learning algorithms that
identify successful entrepreneurial thinking patterns
• Decision Support: AI-assisted analysis of complex business
decisions and their potential outcomes
• Cognitive Scaffolding: Graduated support systems that adapt
to developing entrepreneurial capabilities
AI Technologies in Entrepreneurial Skill Development Enhancing Core Entrepreneurial Competencies
AI technologies offer unique advantages for developing the specific entrepreneurial skills measured in the Liu et al. study:
Personal Skills Enhancement:
• AI-powered role-playing simulations for communication and
leadership practice
• Intelligent feedback on team dynamics and collaboration
patterns in entrepreneurial ventures
• Personalized coaching for time management and
entrepreneurial responsibility
• Emotional intelligence development through AI analysis of
interpersonal interactions
Product Skills Development:
• Generative AI tools for creative idea generation and assessment
• Virtual prototyping and design optimization through AI
algorithms
• Market simulation and user testing through AI analysis
• Intellectual property research and analysis automation
• Technology road-mapping with AI-predicted development
pathways
Business Skills Advancement:
• AI-driven business plan analysis and optimization
• Market trend prediction and opportunity identification
• Financial modelling and risk assessment simulations
• Investment pitch practice with AI evaluation and feedback
• Competitive analysis through AI-powered market intelligence
Addressing the Product Skills Gap
The Liu et al. study found that e-learning technologies had the
weakest impact on product skills (idea generation, assessment,
product design, IP protection, technology road-mapping). AI
technologies specifically address this gap through:
• Generative Design Tools: AI systems that can generate
multiple product design alternatives based on constraints and
objectives
• Idea Validation Algorithms: Systems that analyse market
data, technical feasibility, and resource requirements to assess
new ideas
• Virtual Prototyping: AI-powered simulation of product
performance and user interaction
• Patent Landscape Analysis: Automated research and analysis
of intellectual property considerations
• Technology Forecasting: AI-predicted development pathways
and innovation opportunities
Implementation Framework for Cognitive Technologies Institutional Readiness Assessment
Successful implementation of AI technologies in entrepreneurial education requires careful institutional preparation:
Infrastructure Evaluation:
• Current technology stack compatibility with AI systems
• Data management and security capabilities for sensitive
entrepreneurial projects
• Technical support capacity for advanced learning technologies
• Computational resources for AI-enhanced learning
environments
Pedagogical Preparation:
• Faculty development for AI-enhanced entrepreneurial teaching
• Curriculum redesign to leverage cognitive technology
capabilities
• Assessment modification for AI-supported learning outcomes
• Ethical framework development for AI use in entrepreneurial
education
Phased Implementation Strategy
A structured approach to cognitive technology integration:
Phase 1: Foundation Building (Months 1-6)
• Infrastructure assessment and upgrading for AI technologies
• Faculty training and development in cognitive tools
• Pilot program design and testing in selected entrepreneurship
courses
• Stakeholder communication and engagement
Phase 2: Selective Integration (Months 7-18)
• Targeted AI tool implementation in specific entrepreneurial
skill areas
• Assessment protocol development for cognitive technology
effectiveness
• Continuous faculty support and development
• Student feedback collection and integration
Phase 3: Comprehensive Deployment (Months 19-36)
• Full-scale implementation across entrepreneurship curriculum
• Advanced AI feature integration for personalized learning
• Ongoing optimization and improvement based on performance
data
• Research and assessment dissemination
Assessment and Evaluation Framework Measuring Cognitive Technology Effectiveness
A comprehensive assessment framework for cognitive technologies in entrepreneurial education should include:
Skill Development Metrics:
• Pre- and post-assessment of entrepreneurial competencies
• Longitudinal tracking of skill development and retention
• Comparison of technology-enhanced vs. traditional learning
outcomes
• Real-world application and transfer of learned skills
Cognitive Process Measures:
• Analysis of entrepreneurial decision-making patterns
• Assessment of problem-solving approaches
• Evaluation of creative thinking development
• Measurement of adaptive thinking capabilities
Implementation Success Indicators
Key performance indicators for cognitive technology
integration:
• Student engagement and satisfaction metrics
• Skill acquisition rates and proficiency levels
• Faculty adoption and utilization rates
• Scalability and cost-effectiveness measures
• Long-term entrepreneurial success outcomes
Future Directions and Emerging Trends Next-Generation Cognitive Technologies
Several emerging technologies show particular promise for entrepreneurial education:
Generative AI and Large Language Models:
• Customized business plan generation and refinement
• Market analysis report automation and insight generation
• Investor communication preparation and practice simulations
• Regulatory document analysis and compliance checking
AI-Powered Simulation Environments:
• Virtual business incubation spaces with realistic market
dynamics
• Market competition simulations with adaptive competitors
• Economic scenario testing under various conditions
• Stakeholder negotiation practice with AI-powered characters
Predictive Analytics:
• Early identification of promising entrepreneurial talent and
aptitudes
• Business success probability assessment based on multiple
factors
• Market opportunity forecasting using real-time data
• Risk factor identification and mitigation planning
Research Priorities
Future research should address several key areas:
Longitudinal Studies:
• Tracking the long-term impact of cognitive technologies on
entrepreneurial success
• Comparing outcomes between AI-enhanced and traditional
education approaches
• Assessing skill retention and application over extended periods
Comparative Effectiveness Research:
• Direct comparison of different cognitive technology
implementation approaches
• Analysis of cost-effectiveness and scalability across different
institutional contexts
• Examination of differential effectiveness across student
populations
Integration Models:
• Optimal blending of human instruction and AI cognitive
support
• Cross-cultural adaptation of cognitive educational tools
• Discipline-specific customization approaches for different
entrepreneurial domains
Conclusion
The Cognitive Future of Entrepreneurial Education
The evolution from communication technologies to cognitive systems represents a fundamental transformation in entrepreneurial education philosophy and practice. The research by Liu et al. provides valuable insights into how learning technologies impact entrepreneurial skill development, while also highlighting areas where communication-focused technologies fall short.
Cognitive technologies offer the potential to address these limitations by providing more personalized, engaging, and effective learning experiences. They represent a shift from technology as a communication channel to technology as a cognitive partner— capable of adapting to individual needs, providing real-time feedback, simulating complex business scenarios, and enhancing entrepreneurial thinking processes.
The most significant implications of this transition include:
Enhanced Personalization:
Cognitive technologies enable truly personalized entrepreneurial education pathways, adapting to individual learning styles, prior knowledge, and entrepreneurial interests. This personalization addresses the diverse needs of aspiring entrepreneurs more effectively than one-size-fits-all approaches.
Improved Skill Development:
By addressing the product skills gap identified in the Liu et al. study, cognitive technologies can provide more comprehensive entrepreneurial skill development. The ability to simulate product development processes, test business ideas, and receive intelligent feedback bridges the gap between theoretical knowledge and practical application.
Scalable Quality Education:
AI-enhanced systems make high-quality entrepreneurial education more accessible and scalable. The ability to provide personalized attention and feedback at scale addresses resource constraints while maintaining educational quality.
Continuous Learning Adaptation:
Unlike static communication technologies, cognitive systems continuously adapt and improve based on student interactions and outcomes. This dynamic adaptation ensures that entrepreneurial education remains relevant and effective as market conditions and business environments evolve.
However, successful implementation requires careful attention to pedagogical integration, faculty development, and ethical considerations. The transition to cognitive technologies should be viewed as an opportunity to enhance human capabilities rather than replace human instruction. The most effective future entrepreneurial education models will likely blend the scalability and personalization of cognitive technologies with the mentorship, inspiration, and real-world experience of human educators.
As entrepreneurial education continues to evolve, the focus must remain on developing the cognitive capabilities, creative thinking, and adaptive skills that entrepreneurs need to succeed in rapidly changing business environments. The journey from communication to cognition in learning technologies represents more than technological progress—it signifies an opportunity to create more effective, engaging, and meaningful educational experiences that prepare students for the complex challenges of entrepreneurship [2-10].
Acknowledgment
The research reported in this paper was supported by a project at City University of Hong Kong (Project number: 6000910).
Conflict of Interest
No conflict of interest.
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Sichu LIU and Hongyi SUN*. The Impact of Learning Technologies on Entrepreneurial Education: The Transition from Communication to Cognition. Iris J of Edu & Res. 5(5): 2025. IJER.MS.ID.000619.
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Learning Technologies, Entrepreneurial Education, Artificial intelligence (AI), Learning Management Systems (LMS)
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This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
- Abstract
- Introduction
- Language Representation in the Brain
- What are the Cognitive and Neural Consequence of Bilingualism?
- Developmental Changes across Lifespan in Bilingualism
- Neuroimaging Tools to Study Bilingualism
- Language Experience and Neuroplasticity
- Conclusion and Future Direction
- Acknowledgment
- Conflict of Interest
- References






