SAVOL GENERATSIYASIDA MATN TUZILISHI VA LINGVISTIK OMILLAR TAHLILI
This paper analyzes the role of text structure and linguistic factors in question generation. The study demonstrates that generating questions from text is not limited to transforming declarative sentences into interrogative forms, but involves identifying the information focus, determining syntactic relations, and accounting for semantic connections within the text. Due to the agglutinative nature of the Uzbek language, morphological markers play a crucial role in the formation of questions. The paper examines syntactic, morphological, and semantic factors within the framework of text structure and highlights their impact on the accuracy, grammatical correctness, and naturalness of generated questions.
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