• A
  • A
  • A
  • ABC
  • ABC
  • ABC
  • А
  • А
  • А
  • А
  • А
Regular version of the site

Larger Groups of Students Use AI More Effectively in Learning

Larger Groups of Students Use AI More Effectively in Learning

© HSE University

Researchers at the Institute of Education and the Faculty of Economic Sciences at HSE University have studied what factors determine the success of student group projects when they are completed with the help of artificial intelligence (AI). Their findings suggest that, in addition to the knowledge level of the team members, the size of the group also plays a significant role—the larger it is, the more efficient the process becomes. The study was published in Innovations in Education and Teaching International.

Group projects are an essential and common part of higher education, but there is still uncertainty about what makes teamwork effective.

The situation has become more interesting since the emergence of AI, which students have started to actively use in their studies. Experts from HSE University, including Galina Shulgina, Aleksandra Getman, Ilya Gulenkov, and Jamie Costley, explored how the characteristics of groups—the size and level of participants’ knowledge—affect the outcomes of work when AI is involved.

The study included 196 second-year undergraduate students, 55% of whom were male and 45% female. They had to solve problems as part of a team in a 16-week macroeconomics course. The students were divided into groups of five to eight people with varying levels of knowledge and experience. At first, the students worked independently on tasks. Then, they attended four seminars where they used ChatGPT 3.5 as a group tool. The goal was not simply to receive an answer from the AI, but to critically analyse it, apply economic models from the course, and present a comprehensive solution.

Researchers evaluated the quality of solutions based on the accuracy and detail of students' responses. Teams that not only used AI correctly but also revealed its limitations earned the highest scores, demonstrating a deeper understanding of the material.

The scientists identified several patterns in the use of AI by groups. Firstly, the best results were achieved by teams with members of similar levels of expertise. However, teams with a wider range of knowledge often performed less effectively. This is despite the fact that, in pedagogy, it is often believed that diversity of knowledge can help rather than hinder a team's performance.

Galina Shulgina

‘We were surprised to discover that the wider the range of student grades, the lower the quality of the final decision. This may be because the more prepared students spent time discussing and reaching an agreement on a solution, rather than focusing on the task itself, while less prepared students were unable to fully utilise the AI capabilities available to them. More skilled students are better at interacting with AI, as they can formulate more complex queries, critically evaluate the responses, and use this information to reason through problems,’ explains Galina Shulgina, junior researcher at the International Laboratory of Research and Design in eLearning at HSE University.

Secondly, the data showed a clear positive correlation between a larger team size and better performance when working with AI. Larger teams, with seven to eight members, performed better on average compared to teams with five to six members. Each additional member contributed to the final score, contrary to the common belief in pedagogy that smaller teams are more effective. Scientists argue that larger teams have more intellectual resources and a variety of perspectives, which help them interact more productively with neural networks.

Aleksandra Getman

‘However, this does not mean that efficiency gains will continue infinitely. After a certain point, negative effects may start to appear, such as difficulty in coordination and increased time to coordinate and maintain shared understanding of the task,’ explains Aleksandra Getman, junior researcher at the International Laboratory of Research and Design in eLearning at HSE University.

Despite the need for further research, the authors believe that in order to optimise the use of AI in education, students with similar educational levels should be grouped together in large classes. The researchers suggest that AI could be applied to the study of any subject.

Ilya Gulenkov

‘There is a potential for incorporating AI into group work in any course, regardless of the field of study or level of training. The key task of the teacher in organising such work is to set students’ expectations in advance about how and why AI can be used in their coursework. If students see examples of successful application of AI, then it can become an additional team member in any subject. We observe how students are using more advanced versions of the models (ChatGPT 5, ChatGPT 5 Thinking, etc), and we see great potential for student–AI collaboration. This applies not only to simple, standardised tasks, but also to complex ones that require in-depth understanding, working with multiple sources, and advanced reasoning. The role of students' own expertise in interacting with these models is becoming increasingly important. All models now provide plausible answers, but it is essential to critically evaluate their content,’ says Ilya Gulenkov, lecturer at HSE University’s Faculty of Economic Sciences.

See also:

HSE Students Among Winners of Yandex High-Tech Startup Accelerator

Yandex has announced the results of its Yandex AI Startup Lab accelerator, whose final round featured 12 IT projects. Over the course of three months, their creators—students and young entrepreneurs—worked alongside the company’s experts to develop their products. Four startups in digital marketing, medicine, and robotics were named the best, with their teams receiving cash prizes and cloud resource grants. Among them was Gradius, a startup founded by students from HSE University.

‘Any Real-Economy Company Can Use Our Products’

The HSE Centre for Financial Research and Data Analytics combines fundamental and applied work, including in areas unique to Russia such as the connection between sentiment in the media and social networks and financial markets. The HSE News Service spoke with the centre’s director, Professor Tamara Teplova, about its work.

Researchers Find More Effective Approach to Revealing Majorana Zero Modes in Superconductors

An international team of researchers, including physicists from HSE MIEM, has demonstrated that nonmagnetic impurities can help more accurately reveal Majorana zero modes—quantum states considered promising building blocks for quantum computing. The researchers found that these impurities shift the energy levels that typically obscure the Majorana signal, while leaving the mode itself largely unaffected, thereby making its spectral peak more distinct. The study has been published in Research.

New Development by HSE Scientists Helps Design Reliable Electronics Faster at a Lower Cost

Scientists from HSE MIEM have developed a new approach to modelling electrothermal processes in high-power electronic circuits on printed circuit boards (PCB). The method allows engineers to quickly and accurately predict how electronic components heat up during operation, helping prevent overheating and potential failures. The results have been published in Russian Microelectronics.

The Future of Cardiogenetics Lies in Artificial Intelligence

Researchers from the AI and Digital Science Institute at the HSE Faculty of Computer Science have developed a program capable of analysing regions of the human genome that were previously inaccessible for accurate interpretation in genetic testing. The program adapts large generative AI (GenAI) models for cardiogenetics to predict how specific mutations affect the function of individual genes.

'Where Accurate Prediction of the Outcome Is Impossible, Stochastic Methods Come into Play'

The Laboratory of Stochastic Analysis and its Applications at HSE University studies systems and events in which randomness plays a central role. The goal is to predict various phenomena and how they evolve over time. The HSE News Service interviewed the laboratory's head Vladimir Panov and its academic supervisor Valentin Konakov.

HSE Researchers: Young Russians Have Sufficient Knowledge About Money but Lack Money Management Skills

Adolescents and young adults in Russia today are well versed in financial terminology: they know what bank cards, loans, interest rates, and online payments are. However, as researchers at HSE University have found, real money-management skills remain poorly developed among most young people. The study ‘Financial Literacy, Financial Culture, and Financial Autonomy of Youth’ has been published in Monitoring of Public Opinion: Economic and Social Changes.

Why Weaker Competitors Give Up—and How to Keep Them in the Game

Anastasia Antsygina, Assistant Professor at HSE University’s Faculty of Economic Sciences, has developed a prize distribution model that maximises competitor engagement. She proposed revising the traditional ‘winner-takes-all’ approach and, in certain cases, offering a small reward even to those who have lost. According to her, this could increase participant motivation and make the competition more intense. The findings of her research were published in the Economic Theory journal.

HSE Researchers Compile Scientific Database for Studying Children’s Eating Habits

The database created at HSE University can serve as a foundation for studying children’s eating habits. This is outlined in the study ‘The Influence of Age, Gender, and Social-Role Factors on Children’s Compliance with Age-Based Nutritional Norms: An Experimental Study Using the Dish-I-Wish Web Application.’ The work has been carried out as part of the HSE Basic Research Programme and was presented at the XXVI April International Academic Conference named after Evgeny Yasin.

New Foresight Centre Study Identifies the Most Destructive Global Trends for Humankind

A team of researchers from the HSE International Research and Educational Foresight Centre has examined how global trends affect the quality of human life—from life expectancy to professional fulfilment. The findings of the study titled ‘Human Capital Transformation under the Influence of Global Trends’ were published in Foresight.