Yurii Tomka

Work place: Yuriy Fedkovych Chernivtsi National University, Chernivtsi, 58012, Ukraine

E-mail: y.tomka@chnu.edu.ua

Website: https://orcid.org/0000-0002-0495-3090

Research Interests:

Biography

Yurii Tomka is associate professor at the Computer Science Department of Chernivtsi National University, Chernivtsi, Ukraine. He has nearly 150 scientific papers, over 60 of which are indexed in Scopus. Much of his research focuses on non-invasive early diagnostics of biological tissues using laser polarimetry, as well as related techniques like singular optics and fractalometry, advancing innovative solutions in medical applications. His main research interests also include the development of intelligent computer vision systems using deep learning for image processing, object detection and recognition, multimodal analysis of visual data, and the development of 3D reconstruction systems.

Author Articles
Intelligent Processing Censoring Inappropriate Content in Images, News, Messages and Articles on Web Pages Based on Machine Learning

By Oleksiy Tverdokhlib Victoria Vysotska Olena Nagachevska Yuriy Ushenko Dmytro Uhryn Yurii Tomka

DOI: https://doi.org/10.5815/ijigsp.2025.01.08, Pub. Date: 8 Feb. 2025

This project aims to enhance online experiences quality by giving users greater control over the content they encounter daily. The proposed solution is particularly valuable for parents seeking to safeguard their children, educational institutions striving to foster a more conducive learning environment, and individuals prioritising ethical internet usage. It also supports users who wish to limit their exposure to misinformation, including fake news, propaganda, and disinformation. Through the implementation of a browser extension, this system will contribute to a safer internet, reducing users' vulnerability to harmful content and promoting a more positive and productive online environment. The primary objective of this work is to develop a browser extension that automatically detects and censors inappropriate text and images on web pages using artificial intelligence (AI) technologies. The extension will enable users to personalise censorship settings, including the ability to define custom prohibited words and toggle the filtering of text and images. Accuracy estimates for various classifiers such as Random Forest (0.879), Logistic Regression (0.904), Decision Tree (0.878), Naive Bayes (0.315), and KNN (0.832) were performed.

[...] Read more.
Intelligent System for Recognizing Tone and Categorizing Text in Media News at an Electronic Business Based on Sentiment and Sarcasm Analysis

By Danylo Holubinka Victoria Vysotska Serhii Vladov Yuriy Ushenko Mariia Talakh Yurii Tomka

DOI: https://doi.org/10.5815/ijieeb.2025.01.06, Pub. Date: 8 Feb. 2025

During the implementation of the work on the creation of the system of tonality recognition and text categorization in the news, a study of the subject area was conducted, which allowed the understanding of the processes of text analysis in the mass media to be enriched. The necessary data for further processing was found. The work resulted from a program that consists of an information parser, a data analyser and cleaner, a Large Language Models model, a neural network, and a database with vectorized data. These components were integrated into the user interface and implemented as a program window. The program can analyse news texts, determining their tone and categories. At the same time, it provides the user with a convenient interface for entering text and receiving analysis results. Therefore, the created system is a powerful tool for automated analysis of textual data in mass media, which can be used for various purposes, including monitoring the news space, analysis of public opinion, and others. Also, the developed information technology successfully meets the set tasks aimed at tonality analysis and categorization of news. It effectively solves the task of collecting, analysing and classifying news materials, which allows users to receive operational and objective information. Its architecture and functionality allow for easy changes and additions in the  
future, making it a flexible and adaptable tool for news analytics and decision-making in various business sectors.

[...] Read more.
Other Articles