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首页> 外文期刊>Journal of computational and theoretical nanoscience >Locally Linear Discriminant Embedding for Feature Gene Extraction Based on Dynamical Neighborhood
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Locally Linear Discriminant Embedding for Feature Gene Extraction Based on Dynamical Neighborhood

机译:基于动态邻域的局部线性判别嵌入特征基因提取

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Extracting feature genes is important for disease identification and therapy. Today the state-of-the-art methods are manifold learning methods. In this paper, we use a dynamical neighborhood parameter, instead of a stable neighborhood parameter, to construct the tangent subspace of each point. Dynamical neighborhood can select the neighbors based on the sampling density and the manifold curvation, which overcomes the drawbacks in modified locally linear discriminant embedding. To obtain reliable experimental results, we have not only used the original division of the data set for training and testing, but also reshuffled the data set randomly in the experiments. Then we select the average accuracy of KNN as final prediction classification. The result of our experiments shows that our method is more accurate and stable than other methods. It further explores the feasibility of manifold learning methods in the bioinformatics.
机译:提取特征基因对于疾病的识别和治疗很重要。今天,最先进的方法是多种学习方法。在本文中,我们使用动态邻域参数而不是稳定邻域参数来构造每个点的切线子空间。动态邻域可以基于采样密度和流形弯曲选择邻域,从而克服了局部线性判别式改进嵌入的弊端。为了获得可靠的实验结果,我们不仅将数据集的原始划分用于训练和测试,而且还在实验中随机地对数据集进行了改组。然后,我们选择KNN的平均准确度作为最终预测分类。实验结果表明,该方法比其他方法更准确,更稳定。它进一步探讨了在生物信息学中多种学习方法的可行性。

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