Towards Automatic Scoring of Cloze Items by Selecting Low-Ambiguity Contexts
In second language learning, cloze tests (also known as fill-in-the-blank tests) are frequently used for assessing the learning progress of students. While preparation effort for these tests is low, scoring needs to be done manually, as there usually is a huge number of correct solutions. In this paper, we examine whether the ambiguity of cloze items can be lowered to a point where automatic scoring becomes possible. We utilize the local context of a word to collect evidence of low-ambiguity. We do that by seeking for collocated word sequences, but also taking structural information on sentence level into account. We evaluate the effectiveness of our method in a user study on cloze items ranked by our method. For the top-ranked items (lowest ambiguity) the subjects provide the target word significantly more often than for the bottom-ranked items (59.9% vs. 36.5%). While this shows the potential of our method, we did not succeed in fully eliminating ambiguity. Thus, further research is necessary before fully automatic scoring becomes possible. Keywords: cloze tests, language proficiency tests, automatic scoring
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