GPT-D:通过人工神经语言模型的故意退化诱导痴呆相关的语言异常。

Changye Li, David Knopman, Weizhe Xu, Trevor Cohen, Serguei Pakhomov
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摘要

深度学习(DL)技术涉及对大量模型参数进行微调,在区分认知健康个体和阿尔茨海默病(AD)患者产生的语言方面取得了令人印象深刻的成绩。然而,问题仍然是他们的能力,以推广超出小的参考集,是公开的研究。作为直接拟合模型参数的一种替代方法,我们提出了一种新的方法,通过对一般英语文本进行预训练的Transformer DL模型(GPT-2)与人工退化的Transformer DL模型(GPT-D)配对,计算这两个模型对认知健康个体和认知受损个体的语言困惑度之比。该技术在广泛使用的“Cookie盗窃”图片描述任务的文本数据上达到了最先进的性能,并且与现有的替代方案不同,它也可以很好地推广到自发对话中。此外,GPT-D生成的文本具有已知与AD相关的特征,证明了与痴呆症相关的语言异常的诱导。我们的研究朝着更好地理解生成神经语言模型的内部工作、它们产生的语言以及痴呆症对人类语言和语言特征的有害影响之间的关系迈出了一步。
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GPT-D: Inducing Dementia-related Linguistic Anomalies by Deliberate Degradation of Artificial Neural Language Models.

Deep learning (DL) techniques involving fine-tuning large numbers of model parameters have delivered impressive performance on the task of discriminating between language produced by cognitively healthy individuals, and those with Alzheimer's disease (AD). However, questions remain about their ability to generalize beyond the small reference sets that are publicly available for research. As an alternative to fitting model parameters directly, we propose a novel method by which a Transformer DL model (GPT-2) pre-trained on general English text is paired with an artificially degraded version of itself (GPT-D), to compute the ratio between these two models' perplexities on language from cognitively healthy and impaired individuals. This technique approaches state-of-the-art performance on text data from a widely used "Cookie Theft" picture description task, and unlike established alternatives also generalizes well to spontaneous conversations. Furthermore, GPT-D generates text with characteristics known to be associated with AD, demonstrating the induction of dementia-related linguistic anomalies. Our study is a step toward better understanding of the relationships between the inner workings of generative neural language models, the language that they produce, and the deleterious effects of dementia on human speech and language characteristics.

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