首页> 外文期刊>Cortex: A Journal Devoted to the Study of the Nervous System and Behavior >A computational language approach to modeling prose recall in schizophrenia
【24h】

A computational language approach to modeling prose recall in schizophrenia

机译:精神分裂症中散文回忆建模的计算语言方法

获取原文
获取原文并翻译 | 示例
           

摘要

Many cortical disorders are associated with memory problems. In schizophrenia, verbal memory deficits are a hallmark feature. However, the exact nature of this deficit remains elusive. Modeling aspects of language features used in memory recall have the potential to provide means for measuring these verbal processes. We employ computational language approaches to assess time-varying semantic and sequential properties of prose recall at various retrieval intervals (immediate, 30 min and 24 h later) in patients with schizophrenia, unaffected siblings and healthy unrelated control participants. First, we model the recall data to quantify the degradation of performance with increasing retrieval interval and the effect of diagnosis (i.e., group membership) on performance. Next we model the human scoring of recall performance using an n-gram language sequence technique, and then with a semantic feature based on Latent Semantic Analysis. These models show that automated analyses of the recalls can produce scores that accurately mimic human scoring. The final analysis addresses the validity of this approach by ascertaining the ability to predict group membership from models built on the two classes of language features. Taken individually, the semantic feature is most predictive, while a model combining the features improves accuracy of group membership prediction slightly above the semantic feature alone as well as over the human rating approach. We discuss the implications for cognitive neuroscience of such a computational approach in exploring the mechanisms of prose recall.
机译:许多皮质障碍与记忆问题有关。在精神分裂症中,言语记忆障碍是一个特征。但是,这种赤字的确切性质仍然难以捉摸。记忆回忆中使用的语言功能的建模方面可能会提供用于测量这些言语过程的手段。我们采用计算语言方法评估精神分裂症患者,未患病兄弟姐妹和健康无关的参与者在各种检索间隔(即刻,30分钟和24小时后)的散文回忆的时变语义和顺序属性。首先,我们对召回数据进行建模,以量化随着检索间隔的增加以及性能(诊断,即组成员身份)对性能的影响而导致的性能下降。接下来,我们使用n语法语言序列技术,然后基于潜伏语义分析的语义特征,对人类对召回性能的评分进行建模。这些模型表明,对召回的自动分析可以产生准确模拟人类得分的分数。最终分析通过确定从基于两类语言特征的模型中预测组成员身份的能力来解决此方法的有效性。单独来看,语义特征是最具有预测性的,而结合了这些特征的模型可以提高群体成员资格预测的准确性,其准确性略高于单独的语义特征以及人类评分方法。我们在探讨散文召回机制时,讨论了这种计算方法对认知神经科学的意义。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号