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Chrono Linguistic Modelling through AI Driven Conceptual Frameworks

Askariy MadraimovTashkent State University of Oriental Studies,Department of History of the People of Central Asia,UzbekistanNilufar IsakulovaUzbek State World Languages University,UzbekistanDilobar XoshimovaIroda RasulovaRano KurbaniyozovaUrgench State University,Department of Pedagogy and Psychology,Urgench City,UzbekistanNasiba YarashovaNavoi University of Innovations,Uzbekistan
2025en
ABI

Abstract

Chrono Linguistic Modelling (CLM) explores the evolution of language over time, analyzing linguistic shifts and patterns through temporal dimensions. Artificial intelligence-driven conceptual frameworks enhance CLM by integrating computational models for deeper linguistic insights. Existing methods often rely on static linguistic datasets, limiting their ability to capture real-time language evolution and contextual adaptability. Additionally, traditional models struggle with large-scale, multi-dimensional linguistic data processing. To address these challenges, we propose the AI-Driven Chrono Linguistic Evolutionary Model (AI-CLEM), which leverages machine learning and deep neural networks to analyze linguistic trends dynamically. AI-CLEM integrates diachronic linguistic data with AI-powered contextual adaptation, improving accuracy in detecting language variations. The proposed model is utilized in automated linguistic analysis, historical text mining, and real-time language evolution studies. It enables researchers to identify semantic shifts, lexical changes, and syntactic transformations efficiently. Findings from AI-CLEM indicate significant improvements in linguistic pattern recognition, predictive analysis, and contextual adaptability. This enhances the ability to model linguistic evolution more precisely, contributing to advancements in AI-driven linguistic research.

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