MA Program Curriculum

Semester Type Course Titles Credits
1 Core Principles of Language Learning and Teaching 3
2 Core Language Assessment Using AI 3
3 Elective Computer-Assisted Language Learning & Teaching 3
4 Elective AI & Literacy Studies 3
5 Core Introduction to Corpus Linguistics 3
6 Core Research Methods Using Data Coding 3
7 Core AI Basic Programming 3
8 Elective Task-based Language Teaching (TBLT) 3
9 Elective ELT Curriculum Design 3
10 Core Research Methods: Quantitative (CTT) 3
11 Elective Discourse Analysis 3
12 Elective Vocabulary & Phraseology 3
13 Core Research Methods: Qualitative 3
14 Elective Natural Language Processing (& Large Language Models) 3
15 Elective Second Language Psycholinguistics 3
16 Elective Sociolinguistics 3
17 Elective Spoken Data Analysis & Technology 3
18 Elective Advanced Quantitative Methods 3
19 Core Dissertation I 3
20 Elective Advanced Studies in Corpus Linguistics 3
21 Elective Advance Studies in Language Test Development & Validation 3
22 Core Dissertation II 3
Total 66

1. [Principles of Language Learning and Teaching]

This course will familiarize students with theories, methodologies, issues and practices of language learning and teaching. We will examine theories, principles and models in instructed second language acquisition and will evaluate the applicability of recent pedagogical developments in the language skills and systems for L2 learners in the Korean ELT context.

2. [Language Assessment Using AI]

The goal of this course is to help students build expertise in language assessment. Students will learn the basic theory of language assessment needed to design and analyze language tests. The statistical techniques necessary to analyze language test data will also be covered in the course, and students will learn how to develop and evaluate multiple-choice items, as well as performance assessment items (such as speaking and writing). This course will discuss ways to produce computer-adaptive language tests using artificial intelligence technologies.

3. [Introduction to Corpus Linguistics]

This course introduces Corpus Linguistics as a scientific discipline, blending linguistic theory, quantitative analysis, and data processing. Students will develop foundational knowledge and computational skills for corpus-based research, exploring methodological frameworks, corpus design, data retrieval, and statistical analysis. Hands-on applications include concordances, collocations, keyword analysis, and vector-space modeling for linguistic inquiry.

4. [Research Methods Using Data Coding]

This course introduces students to research methods in applied linguistics including the application of artificial intelligence to language learning. This course covers the procedures necessary for quantitative and qualitative research in applied linguistics and reads examples from journals in applied linguistics. The main goal of this course is to prepare students to be able to conduct their own research studies. Students will also learn basic mathematics and statistical techniques needed to understand how artificial intelligence for language learning works.

5. [AI Basic Programming]

This course introduces text-mining techniques and AI-driven language processing using Python. Students will learn fundamental programming, corpus linguistics, natural language processing, semantic network analysis, topic modeling, and text visualization. Hands-on experience includes working with large language models and managing extensive text data.

6. [Research Methods: Quantitative (CTT)]

This course introduces the core concepts of Classical Test Theory, including the True Score Model, reliability, generalizability theory, validity, test bias and fairness, scale development, and threats to psychometric quality. The goal is to provide students with the skills to conduct robust quantitative research and evaluation in applied linguistics.

7. [Research Methods: Qualitative]

This course is designed to offer a comprehensive introduction to qualitative research methods. Throughout the course, students will develop both the conceptual framework and the technical skills necessary to understand and effectively carry out a qualitative research project. From the initial stages of project conception and design to the final phases of data analysis and write-up, students will gain the knowledge and tools needed to navigate the full research process.

8. [Dissertation I & II]

This course represents the second stage of the dissertation writing process. Students will focus on data analysis, writing the results and discussion sections, and finalizing their dissertation. The course provides support in refining research findings and preparing the dissertation for submission.
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International Graduate School of Language Education, 17, Yangjae-daero 81-gil, Gangdong-gu, Seoul, Korea, 05408,
TEL : 82-2-6477-5114, Admission Contact TEL : 82-80-804-0505
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