Submitted:
23 May 2026
Posted:
26 May 2026
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Abstract

Keywords:
1. Introduction
1.1. Framework Development Approach
1.2. Paper Scope and Positioning
1.3. Paper Structure
2. Literature Review
2.1. The Persistent Challenge of Assessment Feedback in Higher Education
2.2. Report Assessment: Distinctive Challenges and Feedback Demands
2.3. Feedback Literacy: Beyond Transmission Models
2.4. AI-Assisted Assessment: Capabilities, Limitations, and Hybrid Approaches
2.5. Gaps in Existing Frameworks
2.5.1. Gap 1: The Absence of a Feedback Taxonomy That Integrates Pedagogical Purpose with Automation Suitability
2.5.2. Gap 2: The Lack of Concrete, Operationalisable Boundary Conditions for AI Involvement in Assessment
2.5.3. Gap 3: Insufficient Critical Engagement with the Pedagogical Implications of Hybrid Human-AI Assessment Systems, Particularly for Feedback Literacy, Student Agency, and Professional Accountability
3. Tripartite Feedback Framework: Theoretical Foundations and Specification
3.1. Pedagogical Rationale for Three Feedback Levels
3.2. Boundary Conditions and Principles for AI-Assisted Intermediate-Level Feedback
3.2.1. Principle 1: Assessor-Curated Knowledge Bases
3.2.2. Principle 2: Human Oversight and Final Authority
3.2.3. Principle 3: Explicit Limitation to Bounded Verification Tasks
3.2.4. Principle 4: Transparency and Attribution
3.2.5. Principle 5: Security and Integrity by Design
3.3. Relationship to Existing Frameworks
4. Current Technological Capabilities: Necessary Conditions for Appropriate AI Involvement
4.1. Low-Level Feedback: Technologically Mature Domain
4.2. High-Level Feedback: Human Expertise Remains Essential
4.3. Intermediate-Level Feedback: Conditional Viability Under Stringent Constraints
4.3.1. Challenge 1: Hallucination and Factual Reliability
4.3.2. Challenge 2: Verification Capability Limitations
4.3.3. Challenge 3: Verification-Interpretation Boundary Ambiguity
4.3.4. Challenge 4: Security Vulnerabilities (Prompt Injection)
5. Implementation Considerations: Approaches, Safeguards, and Acknowledged Uncertainties
5.1. Phased Implementation Pathway
-
The Report Assessment & Feedback (RAF) procedure commences by:
- o
- defining the list of points (along their relative importance) which the system will factually check;
- o
- setting the rubric, which a human assessor will use to generate high-level feedback; and
- o
- sending to the system the student report to be analysed.
- The system analyses the student report and generates one detailed Low-Level Feedback (LLF) report and one detailed Intermediate-level feedback (ILF) report.
- The human assessor evaluates the so-generated (LLF) and (ILF) reports and can modify them to their satisfaction.
- In the sequel, the human assessor provides their own high-level feedback.
- At this stage, the system has three feedback reports available (i.e. LLF, ILF, and HLF), processes them, ranks the available feedback comments with respect to their importance, and generates a student-facing Final Feedback Report (FFR).
- The human assessor can modify the (FFR) to their satisfaction and approve it for release.
5.2. Human-in-the-Loop: Balancing Oversight and Efficiency
6. Broader Implications and Critical Considerations
6.1. Pedagogical Implications: Centring Student Learning
6.2. Impacts on Academic Work, Professional Identity, and Student Agency
6.2.1. Academic Expertise and Work Transformation
6.2.2. Student Agency and Feedback Literacy
6.3. Security, Integrity, and Equity Considerations
6.3.1. Security and Manipulation Risks
6.3.2. Equity and Fairness Concerns
7. Evaluation Framework: Necessary Evidence for Validation
Comprehensive Mixed-Methods Evaluation Design
8. Limitations and Future Research Directions
9. Conclusions
Funding
Informed Consent Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AI | Artificial Intelligence |
| APA | American Psychological Association |
| FFR | Final Feedback Report |
| GPT | Generative Pre-trained Transformer |
| HITL | Human-in-the-Loop |
| HLF | High-Level Feedback |
| IEEE | Institute of Electrical and Electronics Engineers |
| ILF | Intermediate-Level Feedback |
| LLF | Low-Level Feedback |
| LLM | Large Language Model |
| LMS | Learning Management System |
| NSS | National Student Survey |
| RAF | Report Assessment & Feedback |
| RAG | Retrieval-Augmented Generation |
| STEM | Science, Technology, Engineering and Mathematics |
| VLE | Virtual Learning Environment |
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| Framework | Primary Purpose | Addresses Epistemic Status of Tasks | Criteria for Human-AI Task Allocation | Addresses AI/Technology Explicitly | Addresses Hybrid Accountability | Addresses Feedback Literacy in Hybrid Contexts |
|---|---|---|---|---|---|---|
| Hattie & Timperley (2007) | Explains where feedback operates in learning (task, process, self-regulation, self levels) | No | No | No | No | Partially (self-regulation level) |
| Boud & Molloy (2013) | Reconceptualises feedback design for sustainable learning and student agency | No | No | No | No | Yes (central concern) |
| Carless & Boud (2018) | Defines feedback literacy and conditions for its development | No | No | No | No | Yes (primary focus) |
| Boud & Dawson (2023) | Empirically derives teacher feedback literacy framework | No | No | No | Partially (professional judgment) | Yes |
| Chen et al. (2020); Crompton & Burke (2023) | Reviews AI capabilities and potential in educational assessment | Partially | No | Yes | No | No |
| Noroozi et al. (2024); Samala et al. (2025) | Advocates hybrid human-AI assessment approaches | No | Partially (general principles) | Yes | Partially | No |
| Tripartite Feedback Framework (this paper) | Provides operational criteria for pedagogically principled task allocation in hybrid human-AI assessment | Yes (central distinction) | Yes (five boundary principles) | Yes (at each level) | Yes (non-negotiable) | Yes (design requirement) |
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