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Multiple empirical approaches to a complex analysis of discourse
Date
2008-01-01
Author
Eröz Tuğa, Betil
Fonseca Greber, Bonnıe
Carolıne, Vıckers
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URI
https://hdl.handle.net/11511/71863
Relation
Methods in cognitive linguistics
Collections
Department of Foreign Language Education, Book / Book chapter
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B. Eröz Tuğa, B. Fonseca Greber, and V. Carolıne,
Multiple empirical approaches to a complex analysis of discourse
. 2008, p. 148.