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From Syntax To Semantics: AI assisted Computational Linguistics In The Era Of Large computational Language Models

Zilola SattorovaTashkent State University of Oriental Studies,UzbekistanRamy Read HossainThe Islamic University,College of Technical Engineering,Department of Computers Techniques Engineering,Najaf,IraqI Wayan SuryasaITB STIKOM Bali,Denpasar,IndonesiaYuldashev Ulugbek Vokhidjon UgliFahrurrozi RahmanKalinga University,Department of CS & IT,Raipur,India
2025en
ABI

Abstract

Computational linguistics has evolved from rule-based syntax analysis to deep semantic understanding, driven by advancements in artificial intelligence. The emergence of Large Language Models (LLMs) has revolutionized this field, offering new opportunities for AI-assisted linguistic processing. However, existing methods often struggle with ambiguity, contextual understanding, and resource-intensive training, limiting their ability to achieve human-like comprehension. To address these challenges, this study leverages LLMs to enhance syntactic parsing, semantic disambiguation, and context-aware language processing. Techniques such as prompt engineering, fine-tuning, and retrieval-augmented generation (RAG) are employed to improve linguistic accuracy and efficiency. The proposed framework enables more precise translation, sentiment analysis, and information retrieval while reducing computational overhead. By integrating AI-driven computational linguistics with LLMs, this approach enhances natural language understanding and generation across diverse applications. The findings suggest that LLM-assisted models outperform traditional methods in terms of contextual coherence, accuracy, and adaptability, marking a significant advancement in the field.

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