DEVELOPMENT OF CLASSIFICATION ALGORITHM AND BOOSTING METHOD FOR FAKE NEWS DETECTION: FILTRATION AND ORIENTATION


Suimenbayeva Z. Aylapogu P.K. Kassym R. Tolegenova A. Sarsekulov B. Suimenbayev N. Beibit Y. Tlenshiyeva A. Kassym A. Gulzada M.
2026Technology Center

Eastern-European Journal of Enterprise Technologies
2026#1Issue 225 - 35 pp.

The object of this study is text-based news content distributed through online media and social media platforms, presented as vector objects formed on the basis of unstructured text data and used for subsequent automated analysis. The problem solved in this study is the limited effectiveness, stability, and generalizing ability of traditional machine learning methods in detecting fake news, especially in conditions of heterogeneous datasets, noisy textual characteristics, and dynamically changing linguistic patterns, which negatively affects the quality of classification. The article proposes a method for improving the efficiency of machine learning based on the combined use of SVM and the AdaBoost algorithm. To form an informative representation of text data, complex preprocessing and feature extraction using the TF-IDF model are used. The experimental verification of the method was performed on four open datasets: ISOT, Kaggle, News Trends and Reuters. The results show that the proposed SVM ensemble model with AdaBoost is superior to the basic SVM classifier and a number of traditional algorithms. Accuracy increased from 0.8175 for the base model to 0.83 for SVM+AdaBoost, while memorization increased by 4.02%, average memorization accuracy increased by 2.22%, and the F1 index increased by 1.84%, while the stability of the test accuracy decreased only slightly by 0.19%. The improvement is explained by AdaBoosts adaptive enhancement of the contribution of hard-to-classify objects and a reduction in the number of errors with moderate computational complexity. The developed approach can be effectively applied in automated systems for monitoring news content and social networks in the presence of marked-up text data and limited computing resources Copyright

automatic detection of misinformation , fake news , infodemy , machine learning , social media

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ALT University, Chevchenko str., 97, Almaty, 050013, Kazakhstan
Department of Electrical Communication Engineering, B.V. Raju Institute of Technology, Narsapur, Taljarampet, Telangana, Vishnupur, 502313, India
Department of Information and Communication Technologies, ALT University, Chevchenko str., 97, Almaty, 050013, Kazakhstan
Department of Electrical Engineering, University of Jaén, Campus Las Lagunillas s/n, Jaén, 23071, Spain
Department of Information Communication Technologies, S.Seifullin Kazakh Agrotechnical Research University, Zhenis str., 62, Astana, 010011, Kazakhstan
Department of Information Communication Technologies, S.Seifullin Kazakh Agrotechnical Research University, Zhenis str., 62, Astana, 010011, Kazakhstan
“INSAT Alatau”, LLP Makateva str., 111, Almaty, 050027, Kazakhstan
Department of Radio Engineering and Telecommunication, ALT University, Chevchenko str., 97, Almaty, 050013, Kazakhstan
Department Information Communication Technologies, ALT University, Chevchenko str., 97, Almaty, 050013, Kazakhstan
School of Sciences and Humanities (SSH), Nazarbayev University, Kabanbay Batyr ave., 53, Astana, 010000, Kazakhstan
Department of Radio Engineering and Telecommunication, ALT University, Chevchenko str., 97, Almaty, 050013, Kazakhstan

ALT University
Department of Electrical Communication Engineering
Department of Information and Communication Technologies
Department of Electrical Engineering
Department of Information Communication Technologies
Department of Information Communication Technologies
“INSAT Alatau”
Department of Radio Engineering and Telecommunication
Department Information Communication Technologies
School of Sciences and Humanities (SSH)
Department of Radio Engineering and Telecommunication

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