Modeling Individual Differences among Writers Using ReaderBench


Autoria(s): Allen, Laura; Dascalu, Mihai; McNamara, Danielle; Crossley, Scott; Trausan-Matu, Stefan
Data(s)

18/07/2016

18/07/2016

01/07/2016

Resumo

The current study builds upon a previous study, which examined the degree to which the lexical properties of students’ essays could predict their vocabulary scores. We expand on this previous research by incorporating new natural language processing indices related to both the surface- and discourse-levels of students’ essays. Additionally, we investigate the degree to which these NLP indices can be used to account for variance in students’ reading comprehension skills. We calculated linguistic essay features using our framework, ReaderBench, which is an automated text analysis tools that calculates indices related to linguistic and rhetorical features of text. University students (n = 108) produced timed (25 minutes), argumentative essays, which were then analyzed by ReaderBench. Additionally, they completed the Gates-MacGinitie Vocabulary and Reading comprehension tests. The results of this study indicated that two indices were able to account for 32.4% of the variance in vocabulary scores and 31.6% of the variance in reading comprehension scores. Follow-up analyses revealed that these models further improved when only considering essays that contained multiple paragraph (R2 values = .61 and .49, respectively). Overall, the results of the current study suggest that natural language processing techniques can help to inform models of individual differences among student writers.

This study is part of the RAGE project. The RAGE project has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No 644187. This publication reflects only the author's view. The European Commission is not responsible for any use that may be made of the information it contains.

Identificador

Allen, L.K., Dascalu, M., McNamara, D.S., Crossley, S., & Trausan-Matu, S. (2016). Modeling Individual Differences among Writers Using ReaderBench. In EduLearn (pp. 5269–5279). Barcelona, Spain: IATED.

978-84-608-8860-4

http://hdl.handle.net/1820/6920

Relação

info:eu-repo/grantAgreement/EC/H2020/644187/EU/Realising an Applied Gaming Eco-system/RAGE

Direitos

openAccess

Palavras-Chave #writing skill #automated writing evaluation #comprehension prediction #vocabulary measures #natural language processing
Tipo

conferenceObject