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Detecting Dementia in Mandarin Chinese using Transfer Learning from a Parallel Corpus

机译:使用平行语料库的转移学习检测普通话中的痴呆

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Machine learning has shown promise for automatic detection of Alzheimer's disease (AD) through speech; however, efforts are hampered by a scarcity of data, especially in languages other than English. We propose a method to learn a correspondence between independently engineered lexicosyntactic features in two languages, using a large parallel corpus of out-of-domain movie dialogue data. We apply it to dementia detection in Mandarin Chinese, and demonstrate that our method outperforms both unilingual and machine translation-based baselines. This appears to be the first study that transfers feature domains in detecting cognitive decline.
机译:机器学习显示了通过语音自动检测阿尔茨海默氏病(AD)的希望。但是,数据的匮乏阻碍了工作的开展,尤其是英语以外的语言。我们提出了一种使用域外电影对话数据的大型并行语料库来学习两种语言的独立设计的词汇句法特征之间的对应关系的方法。我们将其应用于普通话痴呆症检测,并证明我们的方法优于基于双语和基于机器翻译的基线。这似乎是第一个在检测认知能力下降时转移特征域的研究。

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