2024
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Revisiting Supertagging for faster HPSG parsing
Olga Zamaraeva
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Carlos Gómez-Rodríguez
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
We present new supertaggers trained on English HPSG-based treebanks and test the effects of the best tagger on parsing speed and accuracy. HPSG treebanks are produced automatically by large manually built grammars and feature high-quality annotation based on a well-developed linguistic theory. The English Resource Grammar treebanks include diverse and challenging test datasets, beyond the usual WSJ section 23 and Wikipedia data. HPSG supertagging has previously relied on MaxEnt-based models. We use SVM and neural CRF- and BERT-based methods and show that both SVM and neural supertaggers achieve considerably higher accuracy compared to the baseline and lead to an increase not only in the parsing speed but also the parser accuracy with respect to gold dependency structures. Our fine-tuned BERT-based tagger achieves 97.26% accuracy on 950 sentences from WSJ23 and 93.88% on the out-of-domain technical essay The Cathedral and the Bazaar. We present experiments with integrating the best supertagger into an HPSG parser and observe a speedup of a factor of 3 with respect to the system which uses no tagging at all, as well as large recall gains and an overall precision gain. We also compare our system to an existing integrated tagger and show that although the well-integrated tagger remains the fastest, our experimental system can be more accurate. Finally, we hope that the diverse and difficult datasets we used for evaluation will gain more popularity in the field: we show that results can differ depending on the dataset, even if it is an in-domain one. We contribute the complete datasets reformatted for Huggingface token classification.
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Spanish Resource Grammar Version 2023
Olga Zamaraeva
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Lorena S. Allegue
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Carlos Gómez-Rodríguez
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
We present the latest version of the Spanish Resource Grammar (SRG), a grammar of Spanish implemented in the HPSG formalism. Such grammars encode a complex set of hypotheses about syntax making them a resource for empirical testing of linguistic theory. They also encode a strict notion of grammaticality which makes them a resource for natural language processing applications in computer-assisted language learning. This version of the SRG uses the recent version of the Freeling morphological analyzer and is released along with an automatically created, manually verified treebank of 2,291 sentences. We explain the treebanking process, emphasizing how it is different from treebanking with manual annotation and how it contributes to empirically-driven development of syntactic theory. The treebanks’ high level of consistency and detail makes them a resource for training high-quality semantic parsers and generally systems that benefit from precise and detailed semantics. Finally, we present the grammar’s coverage and overgeneration on 100 sentences from a learner corpus, a new research line related to developing methodologies for robust empirical evaluation of hypotheses in second language acquisition.
2020
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A Summary of the First Workshop on Language Technology for Language Documentation and Revitalization
Graham Neubig
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Shruti Rijhwani
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Alexis Palmer
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Jordan MacKenzie
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Hilaria Cruz
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Xinjian Li
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Matthew Lee
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Aditi Chaudhary
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Luke Gessler
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Steven Abney
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Shirley Anugrah Hayati
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Antonios Anastasopoulos
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Olga Zamaraeva
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Emily Prud’hommeaux
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Jennette Child
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Sara Child
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Rebecca Knowles
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Sarah Moeller
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Jeffrey Micher
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Yiyuan Li
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Sydney Zink
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Mengzhou Xia
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Roshan Sharma
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Patrick Littell
Proceedings of the 1st Joint Workshop on Spoken Language Technologies for Under-resourced languages (SLTU) and Collaboration and Computing for Under-Resourced Languages (CCURL)
Despite recent advances in natural language processing and other language technology, the application of such technology to language documentation and conservation has been limited. In August 2019, a workshop was held at Carnegie Mellon University in Pittsburgh, PA, USA to attempt to bring together language community members, documentary linguists, and technologists to discuss how to bridge this gap and create prototypes of novel and practical language revitalization technologies. The workshop focused on developing technologies to aid language documentation and revitalization in four areas: 1) spoken language (speech transcription, phone to orthography decoding, text-to-speech and text-speech forced alignment), 2) dictionary extraction and management, 3) search tools for corpora, and 4) social media (language learning bots and social media analysis). This paper reports the results of this workshop, including issues discussed, and various conceived and implemented technologies for nine languages: Arapaho, Cayuga, Inuktitut, Irish Gaelic, Kidaw’ida, Kwak’wala, Ojibwe, San Juan Quiahije Chatino, and Seneca.
2019
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Visualizing Inferred Morphotactic Systems
Haley Lepp
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Olga Zamaraeva
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Emily M. Bender
Proceedings of the 2019 Conference of the North American Chapter of the Association for Computational Linguistics (Demonstrations)
We present a web-based system that facilitates the exploration of complex morphological patterns found in morphologically very rich languages. The need for better understanding of such patterns is urgent for linguistics and important for cross-linguistically applicable natural language processing. In this paper we give an overview of the system architecture and describe a sample case study on Abui [abz], a Trans-New Guinea language spoken in Indonesia.
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Modeling Clausal Complementation for a Grammar Engineering Resource
Olga Zamaraeva
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Kristen Howell
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Emily M. Bender
Proceedings of the Society for Computation in Linguistics (SCiL) 2019
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Handling cross-cutting properties in automatic inference of lexical classes: A case study of Chintang
Olga Zamaraeva
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Kristen Howell
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Emily M. Bender
Proceedings of the 3rd Workshop on the Use of Computational Methods in the Study of Endangered Languages Volume 1 (Papers)
2018
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Clausal Modifiers in the Grammar Matrix
Kristen Howell
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Olga Zamaraeva
Proceedings of the 27th International Conference on Computational Linguistics
We extend the coverage of an existing grammar customization system to clausal modifiers, also referred to as adverbial clauses. We present an analysis, taking a typologically-driven approach to account for this phenomenon across the world’s languages, which we implement in the Grammar Matrix customization system (Bender et al., 2002, 2010). Testing our analysis on testsuites from five genetically and geographically diverse languages that were not considered in development, we achieve 88.4% coverage and 1.5% overgeneration.
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Improving Feature Extraction for Pathology Reports with Precise Negation Scope Detection
Olga Zamaraeva
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Kristen Howell
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Adam Rhine
Proceedings of the 27th International Conference on Computational Linguistics
We use a broad coverage, linguistically precise English Resource Grammar (ERG) to detect negation scope in sentences taken from pathology reports. We show that incorporating this information in feature extraction has a positive effect on classification of the reports with respect to cancer laterality compared with NegEx, a commonly used tool for negation detection. We analyze the differences between NegEx and ERG results on our dataset and how these differences indicate some directions for future work.
2017
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Inferring Case Systems from IGT: Enriching the Enrichment
Kristen Howell
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Emily M. Bender
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Michel Lockwood
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Fei Xia
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Olga Zamaraeva
Proceedings of the 2nd Workshop on the Use of Computational Methods in the Study of Endangered Languages
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Computational Support for Finding Word Classes: A Case Study of Abui
Olga Zamaraeva
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František Kratochvíl
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Emily M. Bender
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Fei Xia
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Kristen Howell
Proceedings of the 2nd Workshop on the Use of Computational Methods in the Study of Endangered Languages
2016
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Inferring Morphotactics from Interlinear Glossed Text: Combining Clustering and Precision Grammars
Olga Zamaraeva
Proceedings of the 14th SIGMORPHON Workshop on Computational Research in Phonetics, Phonology, and Morphology