Abstract
Automatic short-answer grading (ASAG) is a system that aims to help speed up the assessment process without an instructor’s intervention. Previous research had successfully built an ASAG system whose performance had a correlation of 0.66 and mean absolute error (MAE) starting from 0.94 with a conventionally graded set. However, this study had a weakness in the need for more than one reference answer for each question. It used a string-based equation method and keyword matching process to measure the sentences’ similarity in order to produce an assessment rubric. Thus, our study aimed to build a more concise short-answer automatic scoring system using a single reference answer. The mechanism used a semantic similarity measurement approach through word embedding techniques and syntactic analysis to assess the learner’s accuracy. Based on the experiment results, the semantic similarity approach showed a correlation value of 0.70 and an MAE of 0.70 when compared with the grading reference.
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CITATION STYLE
Lubis, F. F., Mutaqin, Putri, A., Waskita, D., Sulistyaningtyas, T., Arman, A. A., & Rosmansyah, Y. (2021). Automated Short-Answer Grading using Semantic Similarity based on Word Embedding. International Journal of Technology, 12(3), 571–581. https://doi.org/10.14716/ijtech.v12i3.4651
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