posted on 2023-09-01, 15:15authored byAndrew Kwok-Fai Lui, Sin-Chun Ng, Stella Wing-Nga Cheung
The technology of automated short answer grading (ASAG) can efficiently
process answers according to human-prepared grading examples.
Computer-assisted acquisition of grading examples uses a computer
algorithm to sample real student responses for potentially good
examples. The process is critical for optimizing the grading accuracy of
machine learning models given a budget of human effort and the
appeal of ASAG to online learning providers. This paper presents a
novel method called short answer grading with active learning (SAGAL)
that features a unified formulation comprising the heuristics for
identifying potentially optimal examples of representative answers,
borderline answers, and anomalous answers. The method is based on
active learning, which iteratively samples good examples and queries
for annotation to increase the sampling accuracy. SAGAL has been
evaluated with three different public datasets of distinctive
characteristics. The results show that the resulting models generally
outperform the baseline semi-supervised learning methods on the same
number of grading examples.