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dc.identifier.urihttps://hdl.handle.net/11401/79114
dcterms.abstractThe last decade was very fruitful in the field of subregular research. New classes of subregular languages and mappings were uncovered for modeling natural language phenomena, and new learning algorithms were developed for these classes. The subregular approach has been successfully applied to phonotactics (Heinz, 2010), rewrite processes in phonology and morphology (Chandlee, 2014), and even syntactic constraints over tree structures (Graf, 2018). However, the rapid pace of the theoretical research has not been matched when it comes to engineering considerations. Many of the proposed learning algorithms have not been implemented yet, and as a result, their performance on concrete data sets is not known. In my dissertation, I implement and experiment with some of the learners available for subregular languages and mappings. I test these learners on data that is modeled after linguistic phenomena such as word-final devoicing and various types of harmony systems. The code for these evaluations is available as part of my Python package SigmaPie (Aksenova, 2020). The findings of my thesis allow linguists and formal language theorists to assess possible applications of subregular techniques and approaches, in particular typology, cognitive science, and natural language processing
dcterms.available2021-04-19T16:16:41Z
dcterms.contributorAdvisor: Graf, Thomas
dcterms.contributorCommittee members: Aronoff, Mark; Heinz, Jeffrey; Sproat, Richard William
dcterms.creatorAksenova, Alena
dcterms.date2020
dcterms.dateAccepted2021-04-19T16:16:41Z
dcterms.descriptionDepartment of Linguistics
dcterms.descriptionDissertation
dcterms.extent349 pages
dcterms.formatapplication/pdf
dcterms.issued2020
dcterms.languageen
dcterms.provenanceSubmitted by Dana Reijerkerk (dana.reijerkerk@stonybrook.edu) on 2021-04-19T16:16:41Z No. of bitstreams: 1 Aksenova_grad.sunysb_0771E_14619.pdf: 1315820 bytes, checksum: aeeaca71df86ccce2f5e9e217832916b (MD5)en
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dcterms.publisherStony Brook University
dcterms.subjectimplementation, language modeling, learning, morphology, phonology, subregular
dcterms.titleTool-Assisted Induction of Subregular Languages and Mappings
dcterms.typeText


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