Date
Publisher
arXiv
Natural Language Processing (NLP) aims to analyze text or speech via
techniques in the computer science field. It serves applications in the domains
of healthcare, commerce, education, and so on. Particularly, NLP has been
widely applied to the education domain and its applications have enormous
potential to help teaching and learning. In this survey, we review recent
advances in NLP with a focus on solving problems relevant to the education
domain. In detail, we begin with introducing the related background and the
real-world scenarios in education to which NLP techniques could contribute.
Then, we present a taxonomy of NLP in the education domain and highlight
typical NLP applications including question answering, question construction,
automated assessment, and error correction. Next, we illustrate the task
definition, challenges, and corresponding cutting-edge techniques based on the
above taxonomy. In particular, LLM-involved methods are included for discussion
due to the wide usage of LLMs in diverse NLP applications. After that, we
showcase some off-the-shelf demonstrations in this domain, which are designed
for educators or researchers. At last, we conclude with five promising
directions for future research, including generalization over subjects and
languages, deployed LLM-based systems for education, adaptive learning for
teaching and learning, interpretability for education, and ethical
consideration of NLP techniques. We organize all relevant datasets and papers
in the open-available Github Link for better review
https://github.com/LiXinyuan1015/NLP-for-Education.
What is the application?
Why use AI?
Study design
