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Rule extraction from electroencephalogram signals using support vector machine

机译:使用支持向量机从脑电图信号中提取规则

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Emotion classification and recognition from electroencephalogram (EEG) signals have been studied extensively due to its potential benefits such as entertainment and health care. Concerning classification, various techniques have been developed and applied. Support Vector Machines (SVMs) has been reported as the most used because of its accuracy. Nevertheless, although SVMs has satisfactory performance, it is unable to provide explanation of the relationships between a model's inputs and outputs. Specifically, it is desirable for a medical application for diagnosis to provide comprehensible rules. Consequently, SVM might not be suitable. In this study, SVM is treated as a black-box and then rules are extracted using the Classification And Regression Trees (CART) approach. A dataset from the Database for Emotion Analysis using Physiological Signals (DEAP) is used in this study. The experimental results show that although a classic SVM model has provided the best accuracy, a rule extraction model from SVM output by CART (SVM-CART) is better than a basic CART model. Therefore, the proposed SVM-CART approach is suitable for applications which need explanations and comprehensibility, such as medical applications.
机译:由于脑电图(EEG)信号的娱乐和医疗保健等潜在好处,因此对其进行了广泛的研究。关于分类,已经开发并应用了各种技术。据报道,由于支持向量机(SVM)的准确性,因此使用最多。尽管如此,尽管SVM具有令人满意的性能,但它无法提供模型输入与输出之间关系的解释。具体地,期望用于诊断的医学应用提供可理解的规则。因此,SVM可能不合适。在这项研究中,SVM被视为黑盒,然后使用分类和回归树(CART)方法提取规则。本研究使用来自使用生理信号进行情绪分析的数据库(DEAP)的数据集。实验结果表明,尽管经典的SVM模型提供了最佳的准确性,但是CART从SVM输出中提取规则提取模型(SVM-CART)优于基本的CART模型。因此,建议的SVM-CART方法适用于需要解释和理解的应用程序,例如医疗应用程序。

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