Publication of the journal

The section is currently being updated

The problem of uncertainties in natural language processing is a critical challenge for AI-driven automation in the digital economy. In this work, lexical, semantic, referential, pragmatic uncertainties that occur in natural language processing are identified. An algorithm enhancing the reliability level due to context disambiguation and misinterpretations reduce is proposed. The empirical results have shown an improvement in classification accuracy and better adaptability in ambiguous scenarios. The proposed approach can be used in digital economy applications, such as customer service chat bots, sentiment analysis for market forecasting, and scientific research. It was demonstrated that by mitigating uncertainty, the algorithm strengthens AI-driven predictive control in automated systems.
Ronald Ssali
National Research University of Electronic Technology, Russia, 124498, Moscow, Zelenograd, Shokin sq., 1

124498, Moscow, Zelenograd, Bld. 1, Shokin Square, MIET, editorial office of the Journal "Proceedings of Universities. Electronics", room 7231

+7 (499) 734-62-05
magazine@miee.ru