Υπολογιστική επεξεργασία της αλλομορφίας στην παραγωγή λέξεων της ελληνικής

Abstract

This thesis presents a systematic approach and analysis of allomorphy, while successfully demonstrates the possibility of treating the phenomenon in computational level in Greek. Previous research did not deal with allomorphy at the derivation process of Greek, while the overall efforts of morphology learning and analysis of allomorphy was extremely limited and partially successful in morphological analysis. In contrast, our work analyses the phenomenon of allomorphy with strict morphological criteria, defines the morphological environments of allomorph participants and presents examples of systematic participation in all word formation processes. More specifically, there are presented the allomorphic behavior of stems and derivational suffixes, restrictions governing the allomorphs selection and proofs of predictability and regularity of the phenomenon. We highlight the lack of defined computational strategy for dealing with allomorphy and the selective treatment of allomorphs. We tes ...
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DOI
10.12681/eadd/32458
Handle URL
http://hdl.handle.net/10442/hedi/32458
ND
32458
Author
Karasimos, Athanasios (Father's name: N.)
Date
2011
Degree Grantor
University of Patras
Committee members
Ράλλη Αγγελική
Παπαζαχαρίου Δημήτριος
Σγάρμπας Κυριάκος
Φακωτάκης Νικόλαος
Γαλιώτου Ελένη
Μανωλέσσου Ιωάννα
Μαρκόπουλος Γεώργιος
Discipline
Humanities and the ArtsLanguages and Literature
Natural SciencesComputer and Information Sciences
Social SciencesEducation
Keywords
Allomorphy; Computational processing; Unsupervised morphology learning; Supervised morphology learning; AlloMantIS
Country
Greece
Language
Greek
Description
xiii, 302 σ., tbls., fig., ch.
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