Predicting CEFR levels in learners of English: The use of microsystem criterial features in a machine learning approach

Author:

Gaillat ThomasORCID,Simpkin AndrewORCID,Ballier NicolasORCID,Stearns BernardoORCID,Sousa AnnandaORCID,Bouyé ManonORCID,Zarrouk ManelORCID

Abstract

Abstract This paper focuses on automatically assessing language proficiency levels according to linguistic complexity in learner English. We implement a supervised learning approach as part of an automatic essay scoring system. The objective is to uncover Common European Framework of Reference for Languages (CEFR) criterial features in writings by learners of English as a foreign language. Our method relies on the concept of microsystems with features related to learner-specific linguistic systems in which several forms operate paradigmatically. Results on internal data show that different microsystems help classify writings from A1 to C2 levels (82% balanced accuracy). Overall results on external data show that a combination of lexical, syntactic, cohesive and accuracy features yields the most efficient classification across several corpora (59.2% balanced accuracy).

Publisher

Cambridge University Press (CUP)

Subject

Computer Science Applications,Linguistics and Language,Language and Linguistics,Education

Reference57 articles.

1. Tono, Y. (2013) Automatic extraction of L2 criterial lexico-grammatical features across pseudo-longitudinal learner corpora: Using edit distance and variability-based neighbour clustering. In Bardel, C., Lindqvist, C. & Laufer, B. (eds.), L2 vocabulary acquisition, knowledge and use: New perspectives on assessment and corpus analysis. Amsterdam: European Second Language Association, 149–176.

2. Regularization and variable selection via the elastic net

3. Dimensions of L2 Performance and Proficiency

4. The English Grammar Profile of learner competence

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