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Practical issues in developing semantic frameworks for the analysis of verbal fluency data: A Norwegian data case study

机译:开发语义框架以分析语言流利性数据时的实际问题:挪威数据案例研究

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Background: Verbal fluency tasks, which require producing as many words in response to a cue in a fixed time, are widely used within clinical neuropsychology and in neuropsycho-logical research. Although semantic word lists can be elicited, typically only the number of words related to the cue is interpreted thus ignoring any structure in the word sequences. Automated language techniques can provide a much needed framework for extracting and charting useful semantic relations in healthy individuals and understanding how cortical disorders disrupt these knowledge structures and the retrieval of information from them. Methods: One minute, animal category verbal fluency tests from 150 participants consisting of healthy individuals, patients with schizophrenia, and patients with bipolar disorder were transcribed. We discuss the issues involved in building and evaluating semantic frameworks and developing robust features to analyze this data. Specifically we investigate a Latent Semantic Analysis (LSA) semantic space to obtain semantic features, such as pairwise semantic similarity and clusters. Results and Discussion: An in-depth analysis of the framework is presented, and then results from two measures based on LSA semantic similarity illustrate how these automated techniques provide additional, clinically useful information beyond word list cardinality.
机译:背景:口语流利性任务需要在固定的时间内响应提示而产生尽可能多的单词,在临床神经心理学和神经心理学研究中被广泛使用。尽管可以引出语义单词列表,但通常仅解释与提示有关的单词数量,因此忽略了单词序列中的任何结构。自动化语言技术可以为在健康个体中提取和绘制有用的语义关系以及了解皮质障碍如何扰乱这些知识结构以及从其中检索信息提供了非常需要的框架。方法:对来自健康个体,精神分裂症患者和双相情感障碍患者的150名参与者进行一分钟动物类别的语言流利度测试。我们讨论了构建和评估语义框架以及开发健壮的功能来分析此数据所涉及的问题。具体来说,我们研究了潜在语义分析(LSA)语义空间以获得语义特征,例如成对语义相似性和聚类。结果与讨论:对该框架进行了深入的分析,然后基于LSA语义相似性的两种方法得出的结果说明了这些自动化技术如何提供除单词列表基数之外的其他临床有用信息。

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