Teacher Perception of Automatically Extracted Grammar Concepts for L2
Language Learning
- URL: http://arxiv.org/abs/2206.05154v1
- Date: Fri, 10 Jun 2022 14:52:22 GMT
- Title: Teacher Perception of Automatically Extracted Grammar Concepts for L2
Language Learning
- Authors: Aditi Chaudhary, Arun Sampath, Ashwin Sheshadri, Antonios
Anastasopoulos, Graham Neubig
- Abstract summary: We present an automatic framework that automatically discovers and visualizing descriptions of different aspects of grammar.
Specifically, we extract descriptions from a natural text corpus that answer questions about morphosyntax and semantics.
We apply this method for teaching the Indian languages, Kannada and Marathi, which, unlike English, do not have well-developed pedagogical resources.
- Score: 91.49622922938681
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: One of the challenges of language teaching is how to organize the rules
regarding syntax, semantics, or phonology of the language in a meaningful
manner. This not only requires pedagogical skills, but also requires a deep
understanding of that language. While comprehensive materials to develop such
curricula are available in English and some broadly spoken languages, for many
other languages, teachers need to manually create them in response to their
students' needs. This process is challenging because i) it requires that such
experts be accessible and have the necessary resources, and ii) even if there
are such experts, describing all the intricacies of a language is
time-consuming and prone to omission. In this article, we present an automatic
framework that aims to facilitate this process by automatically discovering and
visualizing descriptions of different aspects of grammar. Specifically, we
extract descriptions from a natural text corpus that answer questions about
morphosyntax (learning of word order, agreement, case marking, or word
formation) and semantics (learning of vocabulary) and show illustrative
examples. We apply this method for teaching the Indian languages, Kannada and
Marathi, which, unlike English, do not have well-developed pedagogical
resources and, therefore, are likely to benefit from this exercise. To assess
the perceived utility of the extracted material, we enlist the help of language
educators from schools in North America who teach these languages to perform a
manual evaluation. Overall, teachers find the materials to be interesting as a
reference material for their own lesson preparation or even for learner
evaluation.
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