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Computational and Corpus Approaches to Chinese Language Learning: An Introduction

  • Xiaofei LuEmail author
  • Berlin Chen
Chapter
Part of the Chinese Language Learning Sciences book series (CLLS)

Abstract

In this introductory chapter, we first provide a discussion of the rationale and objectives of the book. We then offer a brief review of the body of corpus linguistics research that intersects with Chinese language pedagogy and acquisition. This is followed by an overview of the state of the art of research in computational linguistics and natural language processing that pertains to Chinese language teaching, learning, and assessment. We conclude with a description of the organization of the book.

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Copyright information

© Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  1. 1.The Pennsylvania State UniversityUniversity ParkUSA
  2. 2.National Taiwan Normal UniversityTaipeiTaiwan

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