Title
Automatically grading learners' English using a Gaussian process.
Abstract
There is a high demand around the world for the learning of English as a second language. Correspondingly, there is a need to assess the proficiency level of learners both during their studies and for formal qualifications. A number of automatic methods have been proposed to help meet this demand with varying degrees of success. This paper considers the automatic assessment of spoken English proficiency, which is still a challenging problem. In this scenario, the grader should be able to accurately assess the learner’s ability level from spontaneous, prompted, speech, independent of L1 language and the quality of the audio recording. Automatic graders are potentially more consistent than humans. However, the validity of the predicted grade varies. This paper proposes an automatic grader based on a Gaussian process. The advantage of using a Gaussian process is that as well as predicting a grade, it provides a measure of the uncertainty of its prediction. The uncertainty measure is sufficiently accurate to decide which automatic grades should be re-graded by humans. It can also be used to determine which candidates are hard to grade for humans and therefore need expert grading. Performance of the automatic grader is shown to be close to human graders on real candidate entries. Interpolation of human and GP grades further boosts performance.
Year
Venue
Field
2015
SLATE
Grading (education),Computer science,Second language,Interpolation,Speech recognition,Natural language processing,Gaussian process,Artificial intelligence,Sound recording and reproduction,Bayesian probability
DocType
Citations 
PageRank 
Conference
5
0.51
References 
Authors
5
3
Name
Order
Citations
PageRank
Rogier C. van Dalen170.90
Kate Knill224928.02
Mark J. F. Gales33905367.45