Francesca Callejas


2021

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Minimally-Supervised Morphological Segmentation using Adaptor Grammars with Linguistic Priors
Ramy Eskander | Cass Lowry | Sujay Khandagale | Francesca Callejas | Judith Klavans | Maria Polinsky | Smaranda Muresan
Findings of the Association for Computational Linguistics: ACL-IJCNLP 2021

2020

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MorphAGram, Evaluation and Framework for Unsupervised Morphological Segmentation
Ramy Eskander | Francesca Callejas | Elizabeth Nichols | Judith Klavans | Smaranda Muresan
Proceedings of the Twelfth Language Resources and Evaluation Conference

Computational morphological segmentation has been an active research topic for decades as it is beneficial for many natural language processing tasks. With the high cost of manually labeling data for morphology and the increasing interest in low-resource languages, unsupervised morphological segmentation has become essential for processing a typologically diverse set of languages, whether high-resource or low-resource. In this paper, we present and release MorphAGram, a publicly available framework for unsupervised morphological segmentation that uses Adaptor Grammars (AG) and is based on the work presented by Eskander et al. (2016). We conduct an extensive quantitative and qualitative evaluation of this framework on 12 languages and show that the framework achieves state-of-the-art results across languages of different typologies (from fusional to polysynthetic and from high-resource to low-resource).