From Constituency to UD-Style Dependency: Building the First Conversion Tool of Turkish
Autor: | Asli Kuzgun, Busra Marsan, Olcay Taner Yildiz, Arife Betül Yenice, Oguzhan Kuyrukçu, Oguz Kerem Yildiz, Ezgi Saniyar, Neslihan Cesur, Bilge Nas Arican |
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Rok vydání: | 2021 |
Předmět: |
Parsing
Point (typography) Computer science Process (engineering) business.industry Turkish Phrase structure rules computer.software_genre language.human_language Style (sociolinguistics) language Artificial intelligence business computer Natural language processing Scope (computer science) Dependency (project management) |
Zdroj: | RANLP |
Popis: | This paper deliberates on the process of building the first constituency-to-dependency conversion tool of Turkish. The starting point of this work is a previous study in which 10,000 phrase structure trees were manually transformed into Turkish from the original PennTreebank corpus. Within the scope of this project, these Turkish phrase structure trees were automatically converted into UD-style dependency structures, using both a rule-based algorithm and a machine learning algorithm specific to the requirements of the Turkish language. The results of both algorithms were compared and the machine learning approach proved to be more accurate than the rule-based algorithm. The output was revised by a team of linguists. The refined versions were taken as gold standard annotations for the evaluation of the algorithms. In addition to its contribution to the UD Project with a large dataset of 10,000 Turkish dependency trees, this project also fulfills the important gap of a Turkish conversion tool, enabling the quick compilation of dependency corpora which can be used for the training of better dependency parsers. |
Databáze: | OpenAIRE |
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