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A genetic interval type-2 fuzzy logic-based approach for generating interpretable linguistic models for the brain P300 phenomena recorded via brain-computer interfaces

机译:基于遗传区间2型模糊逻辑的方法,用于为通过脑机接口记录的大脑P300现象生成可解释的语言模型

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One of the important areas of brain-computer interface (BCI) research is to identify event-related potentials (ERPs) which are spatial-temporal patterns of the brain activity that happen after presentation of a stimulus and before execution of a movement. One of the important ERPs is the P300 which is an endogenous component of ERPs with a latency of about 300 ms which is elicited by significant stimuli (visual, or auditory). Various machine learning-based classifiers have been used to predict the P300 events and relate them to the human intended activities. However, the vast majority of the employed techniques like Bayesian linear discriminant analysis (BLDA) and regularized fisher linear discriminant analysis (RFLDA) are black box models which are difficult to understand and analyse by a normal clinician. In addition, due to the inter- and intra-user uncertainties associated with the P300 events, most of the existing classifiers need to be trained for a specific user under specific circumstances and the classifier needs to be retrained for different users or change of circumstances. In this paper, we present an interval type-2 fuzzy logic-based classifier which is able to handle the users' uncertainties to produce better prediction accuracies than other competing classifiers such as BLDA or RFLDA. In addition, the generated type-2 fuzzy classifier is learnt from data via genetic algorithms to produce a small number of rules with a rule length of only one antecedent to maximise the transparency and interpretability for the normal clinician. We also employ a feature selection system based on an ensemble neural networks recursive feature selection which is able to find the effective time instances within the effective sensors in relation to given P300 event. We will present various experiments which were performed on standard data sets and using real-data sets obtained from real subjects' experiments performed in the BCI laboratory in King Abdulaziz University. It will be shown that the produced type-2 fuzzy logic-based classifier will learn simple rules which are easy to understand explaining the events in question. In addition, the produced type-2 fuzzy logic classifier will be able to give better accuracies when compared to BLDA or RFLDA on various human subjects on the standard and real-world data sets.
机译:脑机接口(BCI)研究的重要领域之一是识别与事件相关的电位(ERP),它们是大脑活动的时空模式,在刺激出现后且执行运动之前发生。重要的ERP之一是P300,它是ERP的一种内在组件,其延迟约为300毫秒,这是由大量刺激(视觉或听觉)引起的。各种基于机器学习的分类器已用于预测P300事件并将其与人类预期的活动相关联。但是,绝大部分采用的技术(如贝叶斯线性判别分析(BLDA)和正则化费舍尔线性判别分析(RFLDA))都是黑匣子模型,普通临床医生很难理解和分析。此外,由于与P300事件相关的用户之间和用户内部的不确定性,大多数现有分类器需要在特定情况下针对特定用户进行培训,分类器需要针对不同用户或情况变化进行重新培训。在本文中,我们提出了一种基于区间2型模糊逻辑的分类器,该分类器能够处理用户的不确定性,从而产生比其他竞争性分类器(如BLDA或RFLDA)更好的预测准确性。此外,通过遗传算法从数据中学习生成的2型模糊分类器,以生成少量规则,且规则长度只有一个先行条件,以最大化普通临床医生的透明度和可解释性。我们还采用了基于集成神经网络递归特征选择的特征选择系统,该系统能够找到与给定P300事件相关的有效传感器内的有效时间实例。我们将介绍在标准数据集上进行的各种实验,以及使用从阿卜杜勒阿齐兹国王大学BCI实验室进行的真实受试者实验获得的真实数据集进行的实验。将显示,所产生的基于类型2模糊逻辑的分类器将学习简单的规则,这些规则易于理解,可以解释所讨论的事件。此外,与标准和真实数据集上的各种人类对象的BLDA或RFLDA相比,产生的2型模糊逻辑分类器将能够提供更好的准确性。

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