학술논문

Identifying Enemy Item Pairs using Natural Language Processing.
Document Type
Article
Source
Journal of Applied Testing Technology; 2022 Special Issue, p41-52, 12p
Subject
Natural language processing
Diplomatics
Machine translating
Language
ISSN
23755636
Abstract
Natural Language Processing (NLP) offers methods for understanding and quantifying the similarity between written documents. Within the testing industry these methods have been used for automatic item generation, automated scoring of text and speech, modeling item characteristics, automatic question answering, machine translation, and automated referencing. This paper presents research into the use of NLP for the identification of enemy and duplicate items to improve the maintenance of test item banks. Similar pairs of items can be identified using NLP, limiting the number of items content experts must review to identify enemy and duplicat items. Results from multiple testing programs show that previousely unidentified enemy pairs can be discovered with this method. [ABSTRACT FROM AUTHOR]