Difference between revisions of "Learners with Disabilities"

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* a model (the SpeechRater) automatically scoring open-ended spoken responses for speakers with documented or suspected speech impairments
* a model (the SpeechRater) automatically scoring open-ended spoken responses for speakers with documented or suspected speech impairments
* SpeechRater was less accurate for test takers who were deferred for signs of speech impairment (ρ<sup>2</sup> = .57) than test takers who were given accommodations for documented disabilities (ρ<sup>2</sup> = .73)
* SpeechRater was less accurate for test takers who were deferred for signs of speech impairment (ρ<sup>2</sup> = .57) than test takers who were given accommodations for documented disabilities (ρ<sup>2</sup> = .73)
Riazy et al. (2020) [[https://www.scitepress.org/Papers/2020/93241/93241.pdf pdf]]
* Models predicting course outcome of students in a virtual learning environment (VLE)
* Students with self-declared disability were predicted to pass the course with 16-23 percentage points in favor from the training and test set

Revision as of 00:57, 17 February 2022

  Loukina & Buzick (2017) [pdf]

  • a model (the SpeechRater) automatically scoring open-ended spoken responses for speakers with documented or suspected speech impairments
  • SpeechRater was less accurate for test takers who were deferred for signs of speech impairment (ρ2 = .57) than test takers who were given accommodations for documented disabilities (ρ2 = .73)


Riazy et al. (2020) [pdf]

  • Models predicting course outcome of students in a virtual learning environment (VLE)
  • Students with self-declared disability were predicted to pass the course with 16-23 percentage points in favor from the training and test set