Evaluating human and automated generation of distractors for diagnostic multiple-choice cloze questions to assess children’s reading comprehension - Robotics Institute Carnegie Mellon University

Evaluating human and automated generation of distractors for diagnostic multiple-choice cloze questions to assess children’s reading comprehension

Yi-Ting Huang and Jack Mostow
Conference Paper, Proceedings of International Conference on Artificial Intelligence in Education (AIED '15), pp. 155 - 164, June, 2015

Abstract

We report an experiment to evaluate DQGen’s performance in generating three types of distractors for diagnostic multiple-choice cloze (fill-in-the-blank) questions to assess children’s reading comprehension processes. Ungrammatical distractors test syntax, nonsensical distractors test semantics, and locally plausible distractors test inter-sentential processing. 27 knowledgeable humans rated candidate answers as correct, plausible, nonsensical, or ungrammatical without knowing their intended type or whether they were generated by DQGen, written by other humans, or correct. Surprisingly, DQGen did significantly better than humans at generating ungrammatical distractors and slightly better than them at generating nonsensical distractors, albeit worse at generating plausible distractors. Vetting its output and writing distractors only when necessary would take half as long as writing them all, and improve their quality.

BibTeX

@conference{Huang-2015-122057,
author = {Yi-Ting Huang and Jack Mostow},
title = {Evaluating human and automated generation of distractors for diagnostic multiple-choice cloze questions to assess children’s reading comprehension},
booktitle = {Proceedings of International Conference on Artificial Intelligence in Education (AIED '15)},
year = {2015},
month = {June},
pages = {155 - 164},
}