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Ironic Metonymy in Russian and Arabic : Ироническая метонимия в русском и арабском языках
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This article is devoted to the cognitive study of ironic metonymy in Russian and Arabic. Metonymy and irony have traditionally been seen as parallel linguistic phenomena. But their formation and interpretation are based on different cognitive mechanisms. At the formal and functional level, metonymy and irony have a number of significant differences. Metonymy is an artistic technique, the mechanism of which is based on obvious, easily traced connections between objects and phenomena of the surrounding world. Irony is a satirical technique or a rhetorical figure that is used to create a certain artistic image, aimed at forming the hidden meaning of the statement. A native speaker intuitively feels the difference between metonymy and irony and expresses it in a linguistic form.

Аннотация

Данная статья посвящена когнитивному исследованию иронической метонимии в русском и арабском языках. Метонимия и ирония традиционно рассматривались как параллельные языковые явления. Но в основе их образования и интерпретации лежат разные когнитивные механизмы. На формальном и функциональном уровне метонимия и ирония имеют ряд существенных различий. Метонимия – художественный прием, в основе механизма которого лежат очевидные, легко прослеживаемые связи предметов и явлений окружающего мира. Ирония – сатирический прием либо риторическая фигура, которые используются для создания определенного художественного образа, направлены на формирование скрытого смысла высказывания. Носитель языка интуитивно чувствует разницу между метонимией и иронией и выражает ее в языковой форме. Имеют метонимия и ирония много общих характеристик с точки зрения семантики и коммуникативных свойств. Они представляют собой лингвистически двухслойные явления, в которых проявляется творческая функция языка.

Received on 26/4/2023 

Accepted on 20/8/2023

Published on 2/1/2024

 

 

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