Modeling information structure in a cross-linguistic perspective

Sanghoun Song  

Synopsis

This study makes substantial contributions to both the theoretical and computational treatment of information structure, with a specific focus on creating natural language processing applications such as multilingual machine translation systems. The present study first provides cross-linguistic findings in regards to information structure meanings and markings. Building upon such findings, the current model represents information structure within the HPSG/MRS framework using Individual Constraints. The primary goal of the present study is to create a multilingual grammar model of information structure for the LinGO Grammar Matrix system. The present study explores the construction of a grammar library for creating customized grammar incorporating information structure and illustrates how the information structure-based model improves performance of transfer-based machine translation.

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Author Biography

Sanghoun Song

Sanghoun Song (1977) is specialized in grammar engineering based on the HPSG and MRS formalism. He graduated from Korea University in Seoul, where he earned his BA and MA degree in linguistics. He received a PhD in linguistics from University of Washington in Seattle. Afterwards, he worked at the computational linguistics lab. at Nanyang Technological University in Singapore as a research fellow. Now, he is an assistant professor at Incheon National University. His research interests include grammatical theory (the theory of computational grammar from a cross-linguistic perspective), experimental syntax (the use of acceptability judgments as evidence for linguistic theories), and corpus linguistics (the use of data-based methods to capture linguistic phenomena in human languages).

Published

July 4, 2017
LaTeX source on GitHub
Cite as
Song, Sanghoun. 2017. Modeling information structure in a cross-linguistic perspective. (Topics at the Grammar-Discourse Interface 1). Berlin: Language Science Press. DOI: 10.5281/zenodo.818365

License

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

Details about the available publication format: PDF

PDF

ISBN-13 (15)

978-3-946234-90-6

Publication date (01)

2017-07-04

doi

10.5281/zenodo.818365

Details about the available publication format: Hardcover

Hardcover

ISBN-13 (15)

978-3-944675-97-8