In this paper, we use supervised machine learning to automatically identify the problem localization of peer-review feedback. Using five features extracted via Natural Language Processing techniques, the learned model significantly outperforms a standard baseline. Our work suggests that it is feasible for future tutoring systems to generate assessments regarding the use of localization in student peer reviews.
%0 Journal Article
%1 Xiong10
%A Xiong, Wenting
%A Litman, Diane
%D 2010
%J Lecture Notes in Computer Science
%K Language Natural Processing peer-review
%P 429 - 431
%T Identifying Problem Localization in Peer-Review Feedback
%V 6095/2010
%X In this paper, we use supervised machine learning to automatically identify the problem localization of peer-review feedback. Using five features extracted via Natural Language Processing techniques, the learned model significantly outperforms a standard baseline. Our work suggests that it is feasible for future tutoring systems to generate assessments regarding the use of localization in student peer reviews.
@article{Xiong10,
abstract = {In this paper, we use supervised machine learning to automatically identify the problem localization of peer-review feedback. Using five features extracted via Natural Language Processing techniques, the learned model significantly outperforms a standard baseline. Our work suggests that it is feasible for future tutoring systems to generate assessments regarding the use of localization in student peer reviews.},
added-at = {2011-06-10T12:13:11.000+0200},
author = {Xiong, Wenting and Litman, Diane},
biburl = {https://www.bibsonomy.org/bibtex/20009ce77b3d68ebf169a40ad0a1b7a37/jennymac},
description = {SpringerLink - Abstract
DOI:10.1007/978-3-642-13437-1_93},
interhash = {e1df9dc37bcab87e1a6ee8898b9f59a5},
intrahash = {0009ce77b3d68ebf169a40ad0a1b7a37},
journal = {Lecture Notes in Computer Science},
keywords = {Language Natural Processing peer-review},
pages = {429 - 431},
timestamp = {2011-06-10T12:13:11.000+0200},
title = {Identifying Problem Localization in Peer-Review Feedback},
volume = {6095/2010},
year = 2010
}