Dependency Parsing of Turkish

Author:

Eryiğit Gülşen1234,Nivre Joakim1234,Oflazer Kemal1234

Affiliation:

1. * Department of Computer Engineering, Istanbul Technical University, 34469 Istanbul, Turkey..

2. ** School of Mathematics and Systems Engineering, Växjö University, 35260 Växö, Sweden..

3. † Department of Linguistics and Philology, Uppsala University, Box 635, 75126 Uppsala, Sweden.

4. ‡ Faculty of Engineering and Natural Sciences, Sabancı University, 34956 Istanbul, Turkey..

Abstract

The suitability of different parsing methods for different languages is an important topic in syntactic parsing. Especially lesser-studied languages, typologically different from the languages for which methods have originally been developed, pose interesting challenges in this respect. This article presents an investigation of data-driven dependency parsing of Turkish, an agglutinative, free constituent order language that can be seen as the representative of a wider class of languages of similar type. Our investigations show that morphological structure plays an essential role in finding syntactic relations in such a language. In particular, we show that employing sublexical units called inflectional groups, rather than word forms, as the basic parsing units improves parsing accuracy. We test our claim on two different parsing methods, one based on a probabilistic model with beam search and the other based on discriminative classifiers and a deterministic parsing strategy, and show that the usefulness of sublexical units holds regardless of the parsing method. We examine the impact of morphological and lexical information in detail and show that, properly used, this kind of information can improve parsing accuracy substantially. Applying the techniques presented in this article, we achieve the highest reported accuracy for parsing the Turkish Treebank.

Publisher

MIT Press - Journals

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Language and Linguistics

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