Developing a computer system for student learning based on vision-language models

In recent years, artificial intelligence methods have been developed in various fields, particularly in ed-ucation. The development of computer systems for student learning is an important task and can significantly improve student learning. The development and implementation of deep learning methods in the educational process has gained immense popularity. The most successful among them are models that consider the multi-modal nature of information, in particular the combination of text, sound, images, and video. The difficulty in processing such data is that combining multimodal input data by different channel concatenation methods that ignore the heterogeneity of different modalities is an inefficient approach. To solve this problem, an inter-channel attention module is proposed in this paper. The paper presents a computer vision-linguistic system of student learning process based on the concatenation of multimodal input data using the inter-channel attention module. It is shown that the creation of effective and flexible learning systems and technologies based on such models allows to adapt the educational process to the individual needs of students and increase its efficiency. © Shchetinin E. Y., Glushkova A. G., Demidova A. V., 2024.

Authors
Shchetinin E.Yu. , Glushkova A.G. , Demidova A.V.
Publisher
Федеральное государственное автономное образовательное учреждение высшего образования Российский университет дружбы народов (РУДН)
Number of issue
2
Language
English
Pages
234-241
Status
Published
Volume
32
Year
2024
Organizations
  • 1 Department of Mathematics, Financial University under the Government of the Russian Federation, 49 Leningradsky Ave, Moscow, 125993, Russian Federation
  • 2 Endeavor, Chiswick Park, 566 Chiswick High Road, London, W4 5HR, United Kingdom
  • 3 Department of Probability Theory and Cyber Security, RUDN University, 6 Miklukho-Maklaya St, Moscow, 117198, Russian Federation
Keywords
deep learning; neural networks-transformers; through-channel attention module; vision-language learning model
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Meskin V.A., Zhang H.
Вестник Российского университета дружбы народов. Серия: Литературоведение, журналистика. Федеральное государственное автономное образовательное учреждение высшего образования Российский университет дружбы народов (РУДН). Vol. 29. 2024. P. 524-533