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Sentence Level or Token Level Features for Automatic Short Answer Grading?: Use Both

机译:自动短答案分级的句子级别或令牌级别功能?:同时使用

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Automatic short answer grading for Intelligent Tutoring Systems has attracted much attention of the researchers over the years. While the traditional techniques for short answer grading are rooted in statistical learning and hand-crafted features, recent research has explored sentence embedding based techniques. We observe that sentence embedding techniques, while being effective for grading in-domain student answers, may not be best suited for out-of-domain answers. Further, sentence embeddings can be affected by non-sentential answers (answers given in the context of the question). On the other hand, token level hand-crafted features can be fairly domain independent and are less affected by non-sentential forms. We propose a novel feature encoding based on partial similarities of tokens (Histogram of Partial Similarities or HoPS), its extension to part-of-speech tags (HoPSTags) and question type information. On combining the proposed features with sentence embedding based features, we are able to further improve the grading performance. Our final model achieves better or competitive results in experimental evaluation on multiple benchmarking datasets and a large scale industry dataset.
机译:多年来,智能辅导系统的自动简短答案评分吸引了研究人员的广泛关注。传统的短答案分级技术植根于统计学习和手工制作的功能,而最近的研究则探索了基于句子嵌入的技术。我们注意到,句子嵌入技术虽然可以有效地对域内学生答案进行评分,但可能并非最适合域外学生答案。此外,句子的嵌入可能会受到非句子答案(在问题上下文中给出的答案)的影响。另一方面,令牌级别的手工功能可以完全独立于域,并且不受非语句形式的影响较小。我们提出了一种基于标记的部分相似性(部分相似性直方图或HoPS),其对词性标签(HoPSTags)的扩展以及问题类型信息的新颖特征编码。通过将提出的特征与基于句子嵌入的特征相结合,我们可以进一步提高评分性能。我们的最终模型在多个基准数据集和大规模行业数据集的实验评估中获得了更好或更具竞争力的结果。

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