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EEG Analysis for Olfactory Perceptual-Ability Measurement Using a Recurrent Neural Classifier

机译:使用循环神经分类器进行嗅觉感知能力测量的脑电图分析

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A recurrent neural network model is designed to classify (pretrained) aromatic stimuli and discriminate noisy stimuli of both similar and different genres, using EEG analysis of the experimental subjects. The design involves determining the weights of the selected recurrent dynamics so that for a given base stimulus, the dynamics converges to one of several optima (local attractors) on the given Lyapunov energy surface. Experiments undertaken reveal that for small noise amplitude below a selected threshold, the dynamics essentially converges to fixed stable attractor. However, with a slight increase in noise amplitude above the selected threshold, the local attractor of the dynamics shifts in the neighborhood of the attractor obtained for the noise-free standard stimuli. The other important issues undertaken in this paper include a novel algorithm for evolutionary feature selection and data-point reduction from multiple experimental EEG trials using principal component analysis. The confusion matrices constructed from experimental results show a marked improvement in classification accuracy in the presence of data point reduction algorithm. Statistical tests undertaken indicate that the proposed recurrent classifier outperforms its competitors with classification accuracy as the comparator. The importance of this paper is illustrated with a tea-taster selection problem, where an olfactory perceptual-ability measure is used to rank the tasters.
机译:通过对实验对象进行脑电图分析,设计了循环神经网络模型,以对(预训练的)芳香刺激进行分类(区分),并区分相似和不同体裁的嘈杂刺激。设计涉及确定所选循环动力学的权重,以便对于给定的基本刺激,动力学收敛到给定Lyapunov能量表面上的几个最优值(局部吸引子)之一。进行的实验表明,对于低于选定阈值的小噪声幅度,动力学基本收敛于固定的稳定吸引子。但是,随着噪声幅度的轻微增加(超过所选阈值),动态的局部吸引子在为无噪声标准刺激而获得的吸引子附近移动。本文进行的其他重要问题包括使用主成分分析的多种实验性EEG试验中用于进化特征选择和数据点减少的新颖算法。根据实验结果构建的混淆矩阵在存在数据点归约算法的情况下显示出分类准确度的显着提高。进行的统计测试表明,拟议的循环分类器作为比较器,其分类精度优于竞争对手。本文的重要性通过茶品品尝选择问题得以说明,其中使用嗅觉感知能力量度对品尝者进行排名。

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