Mei-hua Chen

Also published as: Mei-Hua Chen


2023

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Mind the Gap: Automated Corpus Creation for Enthymeme Detection and Reconstruction in Learner Arguments
Maja Stahl | Nick Düsterhus | Mei-Hua Chen | Henning Wachsmuth
Findings of the Association for Computational Linguistics: EMNLP 2023

Writing strong arguments can be challenging for learners. It requires to select and arrange multiple argumentative discourse units (ADUs) in a logical and coherent way as well as to decide which ADUs to leave implicit, so called enthymemes. However, when important ADUs are missing, readers might not be able to follow the reasoning or understand the argument’s main point. This paper introduces two new tasks for learner arguments: to identify gaps in arguments (enthymeme detection) and to fill such gaps (enthymeme reconstruction). Approaches to both tasks may help learners improve their argument quality. We study how corpora for these tasks can be created automatically by deleting ADUs from an argumentative text that are central to the argument and its quality, while maintaining the text’s naturalness. Based on the ICLEv3 corpus of argumentative learner essays, we create 40,089 argument instances for enthymeme detection and reconstruction. Through manual studies, we provide evidence that the proposed corpus creation process leads to the desired quality reduction, and results in arguments that are similarly natural to those written by learners. Finally, first baseline approaches to enthymeme detection and reconstruction demonstrate the corpus’ usefulness.

2022

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Analyzing Culture-Specific Argument Structures in Learner Essays
Wei-Fan Chen | Mei-Hua Chen | Garima Mudgal | Henning Wachsmuth
Proceedings of the 9th Workshop on Argument Mining

Language education has been shown to benefit from computational argumentation, for example, from methods that assess quality dimensions of language learners’ argumentative essays, such as their organization and argument strength. So far, however, little attention has been paid to cultural differences in learners’ argument structures originating from different origins and language capabilities. This paper extends prior studies of learner argumentation by analyzing differences in the argument structure of essays from culturally diverse learners. Based on the ICLE corpus containing essays written by English learners of 16 different mother tongues, we train natural language processing models to mine argumentative discourse units (ADUs) as well as to assess the essays’ quality in terms of organization and argument strength. The extracted ADUs and the predicted quality scores enable us to look into the similarities and differences of essay argumentation across different English learners. In particular, we analyze the ADUs from learners with different mother tongues, different levels of arguing proficiency, and different context cultures.

2015

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Embarrassed or Awkward? Ranking Emotion Synonyms for ESL Learners’ Appropriate Wording
Wei-Fan Chen | Mei-Hua Chen | Lun-Wei Ku
Proceedings of the Tenth Workshop on Innovative Use of NLP for Building Educational Applications

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Bilingual Keyword Extraction and its Educational Application
Chung-Chi Huang | Mei-Hua Chen | Ping-Che Yang
Proceedings of the 2nd Workshop on Natural Language Processing Techniques for Educational Applications

2014

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GLANCE Visualizes Lexical Phenomena for Language Learning
Mei-Hua Chen | Shih-Ting Huang | Ting-Hui Kao | Hsun-wen Chiu | Tzu-Hsi Yen
Proceedings of the Workshop on Interactive Language Learning, Visualization, and Interfaces

2013

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Augmentable Paraphrase Extraction Framework
Mei-Hua Chen | Yi-Chun Chen | Shih-Ting Huang | Jason S. Chang
Proceedings of the Sixth International Joint Conference on Natural Language Processing

2012

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Translating Collocation using Monolingual and Parallel Corpus
Ming-Zhuan Jiang | Tzu-Xi Yen | Chung-Chi Huang | Mei-Hua Chen | Jason S. Chang
Proceedings of the 24th Conference on Computational Linguistics and Speech Processing (ROCLING 2012)

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FLOW: A First-Language-Oriented Writing Assistant System
Mei-Hua Chen | Shih-Ting Huang | Hung-Ting Hsieh | Ting-Hui Kao | Jason S. Chang
Proceedings of the ACL 2012 System Demonstrations

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PREFER: Using a Graph-Based Approach to Generate Paraphrases for Language Learning
Mei-Hua Chen | Shi-Ting Huang | Chung-Chi Huang | Hsien-Chin Liou | Jason S. Chang
Proceedings of the Seventh Workshop on Building Educational Applications Using NLP

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Helping Our Own: NTHU NLPLAB System Description
Jian-Cheng Wu | Joseph Chang | Yi-Chun Chen | Shih-Ting Huang | Mei-Hua Chen | Jason S. Chang
Proceedings of the Seventh Workshop on Building Educational Applications Using NLP

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TransAhead: A Writing Assistant for CAT and CALL
Chung-chi Huang | Ping-che Yang | Mei-hua Chen | Hung-ting Hsieh | Ting-hui Kao | Jason S. Chang
Proceedings of the Demonstrations at the 13th Conference of the European Chapter of the Association for Computational Linguistics

2011

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EdIt: A Broad-Coverage Grammar Checker Using Pattern Grammar
Chung-Chi Huang | Mei-Hua Chen | Shih-Ting Huang | Jason S. Chang
Proceedings of the ACL-HLT 2011 System Demonstrations

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GRASP: Grammar- and Syntax-based Pattern-Finder in CALL
Chung-Chi Huang | Mei-Hua Chen | Shih-Ting Huang | Hsien-Chin Liou | Jason S. Chang
Proceedings of the Sixth Workshop on Innovative Use of NLP for Building Educational Applications

2010

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GRASP: Grammar- and Syntax-based Pattern-Finder for Collocation and Phrase Learning
Mei-hua Chen | Chung-chi Huang | Shih-ting Huang | Jason S. Chang
Proceedings of the 24th Pacific Asia Conference on Language, Information and Computation

2009

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Extending Bilingual WordNet via Hierarchical Word Translation Classification
Tzu-yi Nien | Tsun Ku | Chung-chi Huang | Mei-hua Chen | Jason S. Chang
Proceedings of the 23rd Pacific Asia Conference on Language, Information and Computation, Volume 1