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The Paradigm Discovery Problem

Authors :
Erdmann, Alexander
Elsner, Micha
Wu, Shijie
Cotterell, Ryan
Habash, Nizar
Publication Year :
2020

Abstract

This work treats the paradigm discovery problem (PDP), the task of learning an inflectional morphological system from unannotated sentences. We formalize the PDP and develop evaluation metrics for judging systems. Using currently available resources, we construct datasets for the task. We also devise a heuristic benchmark for the PDP and report empirical results on five diverse languages. Our benchmark system first makes use of word embeddings and string similarity to cluster forms by cell and by paradigm. Then, we bootstrap a neural transducer on top of the clustered data to predict words to realize the empty paradigm slots. An error analysis of our system suggests clustering by cell across different inflection classes is the most pressing challenge for future work. Our code and data are available for public use.<br />Comment: Forthcoming at ACL 2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2005.01630
Document Type :
Working Paper