Learning to translate with products of novices: a suite of open-ended challenge problems for teaching MT
Autor: | Ya-Ting Lin, Juri Ganitkevitch, Beaniesh Jamil, Fatima Rivera, Leili Shahriyari, Debu Sinha, Shang Zhao, Stephen Wampler, Narges Ahmidi, Olivia Buzek, Matt Post, Leah Hanson, Adam Lopez, Jonathan Weese, Matthias A. Lee, Lin Yang, Adam R. Teichert, Daguang Xu, Chris Callison-Burch, Michael Weinberger, Henry Pao |
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Rok vydání: | 2013 |
Předmět: |
Linguistics and Language
Machine translation business.industry Computer science Communication Suite computer.software_genre Outcome (game theory) Field (computer science) Code (semiotics) Computer Science Applications Human-Computer Interaction Artificial Intelligence Human–computer interaction Key (cryptography) Artificial intelligence business Baseline (configuration management) Set (psychology) computer Natural language processing |
Zdroj: | Transactions of the Association for Computational Linguistics. 1:165-178 |
ISSN: | 2307-387X |
DOI: | 10.1162/tacl_a_00218 |
Popis: | Machine translation (MT) draws from several different disciplines, making it a complex subject to teach. There are excellent pedagogical texts, but problems in MT and current algorithms for solving them are best learned by doing. As a centerpiece of our MT course, we devised a series of open-ended challenges for students in which the goal was to improve performance on carefully constrained instances of four key MT tasks: alignment, decoding, evaluation, and reranking. Students brought a diverse set of techniques to the problems, including some novel solutions which performed remarkably well. A surprising and exciting outcome was that student solutions or their combinations fared competitively on some tasks, demonstrating that even newcomers to the field can help improve the state-of-the-art on hard NLP problems while simultaneously learning a great deal. The problems, baseline code, and results are freely available. |
Databáze: | OpenAIRE |
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