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Challenges in Automating Maze Detection

机译:自动化迷宫检测的挑战

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摘要

SALT is a widely used annotation approach for analyzing natural language transcripts of children. Nine annotated corpora are distributed along with scoring software to provide norming data. We explore automatic identification of mazes -SALT'S version of disfluency annotations - and find that cross-corpus generalization is very poor. This surprising lack of cross-corpus generalization suggests substantial differences between the corpora. This is the first paper to investigate the SALT corpora from the lens of natural language processing, and to compare the utility of different corpora collected in a clinical setting to train an automatic annotation system.
机译:SALT是用于分析儿童自然语言成绩单的一种广泛使用的注释方法。九个带注释的语料库与评分软件一起分发,以提供标准数据。我们探索了迷宫的自动识别-SALT的流失注释版本-并发现跨语料库的泛化能力很差。跨语料库泛化的这种令人惊讶的缺乏表明语料库之间存在实质性差异。这是第一篇从自然语言处理的角度研究SALT语料库,并比较在临床环境中收集的不同语料库对训练自动注释系统的效用的论文。

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