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Cognitive State Classification using Genetic Algorithm based Linear Collaborative Discriminant Regression

机译:基于基于遗传算法的线性协作判别回归的认知状态分类

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Functional Magnetic Resonance imaging (fMRI) provides sequence of 3D images which contains large number of voxels as information. There are many statistical methods evolved in last few years to analyze this information. Main concern of all these techniques is huge dimensions of the data produced by these images. This paper proposes an efficient hybrid method for feature selection and classification. This method combine entropy based genetic algorithm (EGA) with Linear Collaborative Discriminant Regression Classification (LCDRC) to form feature based classification method. Entropy based genetic algorithm is applied to find maximum significance between the input and output and also it radically reduces the redundancy within the input features. Experiments' using Star-Plus dataset to classify fMRI images shows that EGA-LCDRC reduces up to 60% features and produces 96.73% accuracy.
机译:功能磁共振成像(FMRI)提供包含大量体素作为信息的3D图像序列。在过去几年中,有许多统计方法才能分析这些信息。所有这些技术的主要关注是这些图像产生的数据的巨大尺寸。本文提出了一种有效的混合方法,用于特征选择和分类。该方法将基于熵的遗传算法(EGA)与线性协作判别回归分类(LCDRC)组合以形成基于特征的分类方法。基于熵的遗传算法应用于在输入和输出之间找到最大意义,并且它概括地缩短了输入功能内的冗余。实验“使用STAR-Plus数据集进行分类FMRI图像,显示EGA-LCDRC可降低高达60%的功能,并精确产生96.73%。

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