학술논문

MuLVE, A Multi-Language Vocabulary Evaluation Data Set
Document Type
Working Paper
Source
Proceedings of the Language Resources and Evaluation Conference. 2022; 673-679
Subject
Computer Science - Computation and Language
Computer Science - Artificial Intelligence
Computer Science - Machine Learning
Language
Abstract
Vocabulary learning is vital to foreign language learning. Correct and adequate feedback is essential to successful and satisfying vocabulary training. However, many vocabulary and language evaluation systems perform on simple rules and do not account for real-life user learning data. This work introduces Multi-Language Vocabulary Evaluation Data Set (MuLVE), a data set consisting of vocabulary cards and real-life user answers, labeled indicating whether the user answer is correct or incorrect. The data source is user learning data from the Phase6 vocabulary trainer. The data set contains vocabulary questions in German and English, Spanish, and French as target language and is available in four different variations regarding pre-processing and deduplication. We experiment to fine-tune pre-trained BERT language models on the downstream task of vocabulary evaluation with the proposed MuLVE data set. The results provide outstanding results of > 95.5 accuracy and F2-score. The data set is available on the European Language Grid.
Comment: Submitted to LREC 2022