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Catch them Learning: A Pathway to Academic Integrity in the Age of AI

May 11, 2025


Tony Frontier

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As the potential for students to misuse AI tools raises ongoing questions about accountability, cheating, and academic integrity, a scandal from the past offers insights into the future.


The Case of Rosie Ruiz

When Rosie Ruiz crossed the finish line of the 84th Boston Marathon, she raised her arms in triumph. Her winning time of 2:31:56 along the 26.2-mile course was one of the fastest ever recorded for a female marathoner. 

Eight days later, Ruiz was formally accused of cheating in Boston and in a previous marathon. But because this was 1980, and the technologies that could be used to cheat were more advanced than the technology available to detect cheating, there was no definitive proof. The case reveals insights about a question relevant to a marathon course or an academic course: How can the integrity of results be ensured when there is easy access to technology that can be used to cheat?

Surprising Results

Ruiz’s victory in the women’s division of the Boston Marathon was a surprise. Several months earlier, she’d finished 11th in the New York City Marathon with a time of 2 hours and 56 minutes. A respectable time, but nowhere near her time in Boston. As usual, the winners of each division in Boston were interviewed just after the finish. A portion of Ruiz’s interview with noted marathoner and race announcer Katherine Switzer was as follows:

Switzer: “You improved from 2 hours and 56 minutes (in New York) to 2 hours and 31 minutes (today). What do you attribute that improvement in time to?”

Ruiz: “Um, I don’t know.”

Switzer: “Have you been doing a lot of heavy intervals?” 

Ruiz: “Um, Someone else asked me that, I’m not sure what intervals are. What are they?”

Switzer: “Intervals are track workouts designed to make your speed improve dramatically…. Is someone coaching you or advising you?”

Ruiz: (chuckling) “Uh…No, I advise myself.”

Switzer: (looking directly into the camera) “…Rosie Ruiz. The mystery woman winner…we missed her at all our checkpoints….” 

In the post-race press conference, Ruiz was baffled by more simple questions about her training methods, running jargon, race-day strategy, and observations along the route. Her inability to give specific answers raised suspicions about her results.

The Accusation, the Evidence, the Response

After an investigation involving police, race officials, and lawyers, Ruiz was disqualified. No images of Ruiz were found among 10,000 photos from the first 25 miles of the course. As she approached the finish, her speed was nowhere near the almost-world-record pace. 

In the press conference after the disqualification, Ruiz vehemently denied any wrongdoing. Despite her promise to win again the next year, she never ran another marathon. 

Missed Signals She’d Cheated in Her Previous Marathon

The press coverage from Boston caught the attention of a New Yorker named Susan Morrow. Morrow was surprised to read that Ruiz had finished in 11th place in the New York Marathon. Morrow had met Ruiz while she was riding the subway during that race. Ruiz told Morrow she’d injured her ankle early in the course and was taking the subway to the medical tent near the finish line. Morrow chatted with Ruiz along the entire 16-mile ride. Then, she and Ruiz exited the subway and watched the first female finishers complete the race. After that, she and Ruiz parted ways. 

After Morrow shared her story, an investigation into Ruiz’s actions during the New York Marathon found that once she arrived at the medical tent, Ruiz told a race official she’d just finished, but no one had recorded her time. The official corrected the ‘mistake’ by writing down the time Ruiz had told him. The time put Ruiz in 11th place. If her sub-three-hour time had been legitimate, it would have been unbelievable: On her entry form, she estimated her completion time would be 4 hours and 10 minutes. Six months after the New York marathon had concluded, Ruiz was retroactively disqualified from that race.

The Motive

It is unknown whether Ruiz intended to cheat in New York or if the opportunity merely presented itself and she took it. What is known is that her colleagues at New York’s Metals Trading Institute were excited she was running the NYC Marathon and Ruiz had told them she expected to do well in the race. When she returned to work on the Monday after the race, her boss and colleagues greeted her as a hero. They were so impressed with her 11th place finish in New York that they chipped in to give her financial support to run the Boston Marathon. Perhaps, with their support, she could improve on her world-class time and even earn a spot on the podium? She didn’t disappoint. When she crossed the finish line in victory, she was wearing the “MTI” t-shirt they’d given her as a show of their pride for her to wear during the race. 

Holding Students Accountable in an Era of AI

Whether it’s a subway along a marathon course or an AI tool in an academic course, technology can be misused to take shortcuts that render results meaningless. There are multiple pathways to holding students accountable for their evidence of learning; one is to focus on cheating, the other is to focus on integrity. 

Integrity is often talked about as a coin that reads “cheated” on one side and “didn’t cheat” on the other. But integrity is a different coin entirely. Consider these definitions that I share in my book, AI with Intention: Principles and Action Steps for Teachers and School Leaders:

The Ruiz case is a cautionary tale about the limits of efforts to ensure accountability by focusing on cheating. Susan Morrow and Katherine Switzer revealed a different approach to accountability: the power of relationships, transparency, and explainability to ensure the integrity of results. The following steps can help you, and your students, take action to ensure academic integrity.

1. Acknowledge the limits of detecting and accusing students of cheating. 

Data collected both before and after the release of ChatGPT show that about 65% of students reported that they’d cheated in the previous month (Lee et al., 2024); these rates are nearly identical to what students reported in previous years. In other words, regardless of students’ access to AI tools, cheating has been and continues to be endemic. The fact that AI detection tools are not foolproof (Fleckenstein et al., 2023) and can be gamed by students (Dougall, 2024), means accusations of cheating will continue to be difficult to prove, time-consuming, and require the teacher to carry the burden of accusatory proof. 

The pressure students feel to get high grades — and the pressure for teachers to give them — are both real. Students know there will be consequences if they are caught cheating, but they weigh them against the consequences of not achieving. Meanwhile, teachers know that it can be difficult to prove cheating occurred, and there can be significant repercussions for a wrongful accusation. 

If cheating is the claim, it must be proven by catching the cheater in the act, finding irrefutable evidence, or eliciting a confession. The Ruiz case is analogous to how this usually unfolds in the classroom: Irrefutable evidence is elusive, and confessions rarely happen. Even when caught in the act, students fall into a defensive mode similar to Ruiz; they bend the limits of logic and the laws of physics to deny any wrongdoing. 

Many teachers have attempted to deter cheating with AI by threatening greater consequences. But increased consequences can have a paradoxical effect: The greater the consequences for the cheater, the greater the burden of proof for the accuser. This happened in Boston; minutes after Ruiz was crowned the winner, race officials doubted her surprising results. But the stakes of disqualifying the winner put officials in a state of paralysis; a formal investigation would be required before acknowledging any suspicious behavior. 

In this era of easy-to-create but difficult-to-detect AI-generated text, many teachers find themselves in a similar state of paralysis. Absent foolproof detection tools, they feel powerless to do or say anything when they doubt a student’s results. But this paralysis is based on the false premise that only if AI detection tools are perfect can anything be done to prevent cheating or ensure integrity. By acknowledging the limits of strategies that seek to police integrity by catching students cheating, we can turn our attention to a more comprehensive set of strategies that minimize cheating and maximize integrity.

2. Minimize conditions where cheating is most likely to occur.

Addressing cheating primarily as deviant behavior that can be fixed with policies and punishments overlooks its root causes. When the pressure to achieve exceeds the fear of being caught, students easily rationalize why cheating is a logical, justifiable choice (Challenge Success, 2021). Consider the following classroom conditions associated with increased cheating:

When teachers are aware of and take action to minimize these factors, they can take action to minimize cheating.

3. Emphasize integrity by focusing on transparency, explainability, and relationships 

Inquiry about cheating begins with the question “Did the student actually do the work?” Inquiry about integrity begins with the question “Does this work accurately represent the student’s skills and understandings?” Teachers can help learners support claims about the integrity of their work by consistently asking them to show evidence of transparency and explainability (Frontier, 2025). 

What does this look like in practice? We can take some lessons from the Rosie Ruiz story.

Katherine Switzer didn’t accuse Ruiz of cheating in Boston. She simply asked Ruiz the questions she’d ask of any marathoner to transparently describe their training methods and explain what they saw and learned along the course. These questions weren’t accusations. In fact, for those who completed the entire course, they would be welcomed as expressions of interest. Ruiz’s inability to transparently reflect on her training or explain her results showed that her finishing time lacked integrity.

Similarly, Susan Morrow didn’t accuse Ruiz of cheating in New York. She was simply the only person who saw Ruiz as a unique individual on race day. No one else saw Ruiz as anything other than a number. Morrow’s interest in Ruiz lifted the veil of anonymity and allowed her to help hold Ruiz accountable. 

These anecdotes can be transferred to specific strategies that support integrity, maximize learning, and minimize cheating in an academic course.

4. Use strategies that support integrity, maximize learning, and minimize cheating

As I argue in my book AI with Intention, if we want students to use AI tools with integrity, we must teach them how. Strategies that support integrity help students prioritize their efforts to engage in the learning process (Frontier, 2021), hold students accountable for evidence of important understandings (Wiggins & McTighe, 2006), and minimize the conditions where cheating is likely to occur (Miles et al., 2022). 

4.1 Align expectations with opportunities to learn. The greater the alignment between stated teaching priorities and students’ learning opportunities, the better students can pursue rigorous and realistic goals. 

4.2 Affirm students at the starting line. When students believe their teachers care about them and know their current abilities, they are more likely to act with integrity. 

4.3 Create clear boundaries for what resources can, and cannot, be used for formative and summative work. Suppose race officials instituted a rule that said, “Any participant using the subway will be disqualified.” Does that include taking the subway to the starting line? To a running track for a training run? In an era of ubiquitous access to AI tools, simply saying “Using AI is cheating” can be interpreted by students to mean, “Well, then I guess everyone is cheating, so anything goes.”

4.4 Acknowledge progress at checkpoints. Checkpoints along the route aren’t punitive. They ensure participants are on track toward a successful finish.

4.5 Provide consistent expectations for acknowledging sources and outside help. Arbitrary enforcement of policies confuses students. For example, an academic integrity policy might say “receiving outside assistance” is cheating, but students are rarely asked about assistance from parents, tutors, or apps. Or a policy might say “failure to properly cite sources” is plagiarism. However, students are often told to include specific information from assigned texts in their daily work, but they are rarely asked to acknowledge those texts as sources.

4.6 Consistently seek evidence of transparency and explainability. By asking questions like Katherine Switzer, you can help learners provide evidence of their effort, strategy, and understanding throughout the learning process. 

4.7 Frame integrity as the basis of your partnership for effective teaching and learning. 

Regardless of your school’s academic integrity policy, consider how a statement like the one below in your syllabus (Frontier, 2025) could clarify the importance of integrity as the basis for your partnership to effectively teach and learn.

“It is important that you submit your own work so I can provide meaningful feedback to you to inform your next efforts to learn. If I don’t know what you do or don’t know, I can’t adjust my instruction to better support your learning. It’s okay not to know. It’s okay to ask questions. If you knew all of this already, there’d be no need for you to take this class. 

Academic integrity means you own what you know, acknowledge what you don’t know, and are transparent about the ideas or words you use that were drawn from others’ work or through the use of AI tools. Sometimes, I’ll ask you to retrace your steps so I can affirm – or assist with – the process you’ve used to complete a task. I’ll always ask you to cite your sources. I’ll always expect you to give credit to others or to a technology tool when credit is due. 

Academic dishonesty involves any attempt to take credit for knowledge or skills that you don’t actually possess as your own. If you cannot explain your work after it has been completed, it may or may not be evidence of academic dishonesty. However, it is evidence that you haven’t internalized that knowledge or those skills yet. If that is the case, I need to know so I can help you take the next steps necessary to learn.”

The Path Forward

Today’s students can easily access AI tools to take shortcuts through any academic course. By using strategies that support integrity, transparency, and explainability, we can work in partnership with our students to help them use tools and resources in ways that ensure we’ll have plenty of opportunities to catch them learning and celebrate their results. And when they step up to the microphone after they’ve run their best race, they’ll be able to speak with confidence and pride about the strategies they used, what they learned about important content and skills, and what they learned about themselves. 


References

Challenge Success (2021). Cheat or be cheated? What we know about academic integrity. Retrieved from: https://challengesuccess.org/resources/cheat-or-be-cheated-what-we-know-about-academic-integrity

Dougall, J. (2024). My AI experiment: how many students can beat detection software? Tes Magazine. https://www.tes.com/magazine/teaching-learning/secondary/how-easy-is-it-to-cheat-with-AI-without-being-detected-in-school

Fleckenstein, J., Meyer, J., Jansen, T., Keller, S. D., Köller, O., & Möller, J. (2024). Do teachers spot AI? Evaluating the detectability of AI-generated texts among student essays. Computers and Education: Artificial Intelligence, 6, 100209. https://doi.org/10.1016/j.caeai.2024.100209

Frontier, T. (2021). Teaching with clarity: How to prioritize and do less so students understand more. ASCD.

Frontier, T. (2025). AI with intention: Principles and action steps for teachers and school leaders. ASCD.

Lee, V.R., Pope, D., Miles, S., & Zárate, R.C. (2024). Cheating in the age of generative AI: A high school survey study of cheating behaviors before and after the release of ChatGPT. Computers and Education: Artificial Intelligence, v7:1-10.

Miles, P., Campbell, M., Ruxton, G. (2022). Why Students Cheat and How Understanding This Can Help Reduce the Frequency of Academic Misconduct in Higher Education: A Literature Review. Journal of Undergraduate Neuroscience Education. 20(2), 150-160. 

Miller, A., Murdock, T., & Grotewiel, M. (2017). Addressing Academic Dishonesty Among the Highest Achievers. Theory Into Practice. 56:1-8. 10.1080/00405841.2017.1283574.

Wiggins, G., & McTighe, J. (2006). Understanding by Design. ASCD.


Tony Frontier, PhD, is a researcher, author, and consultant. His latest book, AI with Integrity: Principles and Action Steps for Teachers and School Leaders will be published by ASCD in May of 2025. He can be reached through LinkedIn, his website, or by email at tonyfrontier@gmail.com.


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4 Comments

  1. Jess League says:

    I love the focus on integrity that is emphasized in this article, and I love the idea of developing more of a partnership with students. I do have a legitimate question, though. I had several students cheat using AI this year in spite of teachers taking the aforementioned steps to minimize conditions where cheating is likely to take place. Many of them do so simply out of laziness. It’s easier to copy and paste from AI and take the chance that the teacher will overlook it, especially since it is difficult for teachers to prove it. And, you’re right, students do weigh their options. How is it possible to ensure integrity when students know that their teachers hands are somewhat tied when it comes to accusing them of using AI, and therefore the risk of punishment is worth it because in reality, the punishment is really not that bad?

    • Hi Jess. This is a tough question. Tony will be replying pretty soon, so I’d like to hear his response on this. My first thought is that we’re never going to have 100% success with any classroom problem. With some students and in some situations, there’s not much we can do to ensure full integrity, but I do think we can get closer with an approach like the one outlined here.

  2. Laura Stebbins says:

    I was really frustrated listening to this podcast. It is so hard listening to a consultant who is not in the classroom. I appreciate that he consults students and teachers, but that is not the same. I do many of the things he talks about: I know the AI checkers don’t work and I don’t rely on them. I break my writing projects into steps and I guide the students along the way. I have allowed them to use AI to revise certain sentences as long as they let me know that that is what they’re doing. However, I have found that kids will use AI to replace their own learning at every opportunity. I finally just got to a point where all the work has to be done in the classroom to ensure that they are the ones doing it. The assumption of this episode was that all kids are eager to learn and teachers aren’t doing what they need to do to make that happen. I think the opposite is true. Teachers are working so hard to make the learning accessible. It is very challenging these days to get kids to want to learn. When they don’t want to learn it doesn’t matter to them if they use AI.

    • Hi Laura. It sounds like you’re doing a LOT right already. Before I talked with Tony, my standard advice to any writing teacher regarding AI was “do all the writing in the classroom.” As an English teacher myself, pre-AI, I took this approach anyway; it allowed me to formatively assess students much more effectively and it was a pretty fool-proof way to prevent plagiarism. Some of his other ideas, like having students periodically submit on-the-spot summaries of how their projects are going and a reflection of what they learned at the end (on paper, in person), were things I never would have thought of. I also found the discussion of integrity vs. cheating to be nuanced and thought-provoking — one that would be good to share with students.

      I absolutely believe teachers are doing everything they can to facilitate high-quality learning, and that it often feels like an impossible task. I thought Tony clearly acknowledged that; I’m looking for anything in the article that makes it sound like students are simply eager to learn or that teachers are to blame for their cheating and I’m not seeing it. My goal in every post I publish on this site is to offer ideas that might be helpful in the very complicated and difficult work of teaching. If you didn’t find anything like that in this one, I’m so sorry. There are so many people trying to address the new challenges we’re facing with AI, so I hope you find answers elsewhere that are a better fit for you.

      I often hear the concern about whether people who are no longer in the classroom can offer anything of value to those who are still teaching. I get this pushback myself fairly regularly. All I can say is that in every profession, there are those who are actively practicing and those who have moved on to roles in which they help, manage, or direct those who are still practicing — some physicians go on to supervise and teach other physicians, some athletes become coaches, some writers become editors, some actors go on to direct. In all of these scenarios, just like in teaching, experience inspires some to want to help others in a broader capacity. While they no longer have “on the ground” daily experience, those who do this work best try to keep learning from those who are still actively practicing. I’ll keep trying!

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