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Artificial intelligence in education and academic integrity: an undergraduate argumentative essay in the United States

Generative artificial intelligence necessitates a fundamental re-evaluation of pedagogical standards and ethical frameworks within higher education. This essay examines the tension between AI-assisted learning as a collaborative resource and the traditional preservation of intellectual honesty in undergraduate environments.

Тезис

The integration of generative artificial intelligence into undergraduate curricula requires shifting from a policy of prohibition to one of calibrated trust and human-AI collaboration to maintain academic integrity.

Основні аргументи

  • 1.Generative AI functions as a transformative learning resource rather than a simple mechanism for academic dishonesty.
  • 2.Student trust and ethical comfort evolve through direct, supervised engagement with AI tools.
  • 3.Institutional frameworks must prioritize stakeholder oversight to mitigate concerns regarding accuracy and the potential hindrance of critical thinking skills.

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Analysis

Comparative Analysis of Student Perceptions and Academic Trust

The shift from viewing generative AI as a 'cheating tool' to a 'collaborative resource' suggests that direct student engagement is essential for ethical maturation [3]. While these tools offer significant potential for personalized feedback, reliance on such systems necessitates robust instructor oversight to compensate for output inaccuracies [3]. The contrast between immediate academic efficiency and long-term critical thinking development remains the primary analytical tension within current institutional policy frameworks [2].

Method

Methodological Approach to Assessing AI Integration

This analysis utilizes a systematic review of existing empirical studies on generative AI integration [2], complemented by a pre-post study design examining student engagement with ChatGPT in undergraduate engineering contexts [3]. Criteria for evaluation focus on learning efficacy, ethical perception shifts, and the calibration of trust between students and AI-generated outputs, acknowledging limitations inherent in emerging, rapidly evolving digital tools.

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Artificial intelligence in education and academic integrity: an undergraduate argumentative essay in the United States

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Прізвище Ім'я По батькові

Науковий керівник:

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Місто 2026

Зміст

Introduction6
Conceptual Framework of Generative AI in Higher Education9
Methodological Approach to Assessing AI Integration12
Analysis15
Conclusion21
Bibliography23

Вступ

The emergence of generative artificial intelligence has initiated a profound shift in the pedagogical landscape of United States undergraduate education.

This technological advancement introduces complex challenges regarding the traditional definitions of academic integrity and student performance assessment within the classroom [2].

Recent empirical evidence suggests that while these tools offer personalized learning experiences, their implementation requires careful navigation to prevent the erosion of fundamental critical thinking skills [2].

Academic institutions must reconcile the rapid adoption of these technologies with the persistent necessity for rigorous, transparent, and ethical evaluation methods [3].

This essay evaluates the impact of generative AI on undergraduate writing assignments by analyzing student perceptions of ethical utility versus the risks of academic misconduct [3].

Finally, the subsequent chapters examine the pedagogical implications of AI-driven tools, proposing an integrated framework that balances technological utility with established institutional academic standards [2].

Список використаних джерел

  1. Textual imitations and artificial intelligence : a prospective essay on academic fraud (2024)
    Ludovic Jeanne
    Посилання DOI
  2. Future of education in the era of generative artificial intelligence: Consensus among Chinese scholars on applications of ChatGPT in schools (2023)
    Ming Liu, Yiling Ren, Lucy Michael Nyagoga et al.
    Посилання DOI
  3. Student Perceptions of ChatGPT Use in a College Essay Assignment: Implications for Learning, Grading, and Trust in Artificial Intelligence (2024)
    Chad C. Tossell, Nathan L. Tenhundfeld, Ali Momen et al.
    Посилання DOI
  4. Academic Integrity and Artificial Intelligence (2024)
    Ceceilia Parnther
  5. (Academic) Integrity in the Age of Artificial Intelligence (2026)
    Ke Yu

Список літератури

Академічні джерелаСтандарти оформленняУнікальністьPro моделі

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ДСТУ 3008:2015 (Звіти у сфері науки і техніки)

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ДСТУ 3008:2015 (Звіти у сфері науки і техніки)