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Kontrapunktno branje romana Srce teme : diplomsko delo
ID
Kovačič, Branko
(
Author
),
ID
Velikonja, Mitja
(
Mentor
)
More about this mentor...
,
ID
Jeffs, Nikolai
(
Comentor
)
URL - Presentation file, Visit
http://dk.fdv.uni-lj.si/diplomska/pdfs/Kovacic-Branko.PDF
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Language:
Slovenian
Work type:
Undergraduate thesis
Typology:
2.11 - Undergraduate Thesis
Organization:
FDV - Faculty of Social Sciences
Place of publishing:
Ljubljana
Publisher:
[B. Kovačič]
Year:
2007
Number of pages:
93 f.
PID:
20.500.12556/RUL-9474
UDC:
82.09(043)
COBISS.SI-ID:
26655837
Publication date in RUL:
11.07.2014
Views:
16330
Downloads:
334
Metadata:
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:
KOVAČIČ, Branko, 2007,
Kontrapunktno branje romana Srce teme : diplomsko delo
[online]. Bachelor’s thesis. Ljubljana : B. Kovačič. [Accessed 27 June 2025]. Retrieved from: http://dk.fdv.uni-lj.si/diplomska/pdfs/Kovacic-Branko.PDF
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