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首页> 外文期刊>Journal of Medical Systems >Similarity-Dissimilarity Plot for Visualization of High Dimensional Data in Biomedical Pattern Classification
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Similarity-Dissimilarity Plot for Visualization of High Dimensional Data in Biomedical Pattern Classification

机译:生物医学模式分类中高维数据可视化的相似度-不相似度图

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摘要

In pattern classification problems, feature extraction is an important step. Quality of features in discriminating different classes plays an important role in pattern classification problems. In real life, pattern classification may require high dimensional feature space and it is impossible to visualize the feature space if the dimension of feature space is greater than four. In this paper, we have proposed a Similarity-Dissimilarity plot which can project high dimensional space to a two dimensional space while retaining important characteristics required to assess the discrimination quality of the features. Similarity-dissimilarity plot can reveal information about the amount of overlap of features of different classes. Separable data points of different classes will also be visible on the plot which can be classified correctly using appropriate classifier. Hence, approximate classification accuracy can be predicted. Moreover, it is possible to know about whom class the misclassified data points will be confused by the classifier. Outlier data points can also be located on the similarity-dissimilarity plot. Various examples of synthetic data are used to highlight important characteristics of the proposed plot. Some real life examples from biomedical data are also used for the analysis. The proposed plot is independent of number of dimensions of the feature space.
机译:在模式分类问题中,特征提取是重要的一步。区分不同类别的特征质量在模式分类问题中起着重要作用。在现实生活中,模式分类可能需要高维特征空间,并且如果特征空间的维数大于4,则无法可视化特征空间。在本文中,我们提出了一种相似度-非相似度图,该图可以将高维空间投影到二维空间,同时保留评估特征鉴别质量所需的重要特征。相似度-不相似度图可以揭示有关不同类别的要素的重叠量的信息。不同类别的可分离数据点也将在图中可见,可以使用适当的分类器正确分类。因此,可以预测近似的分类精度。此外,有可能知道分类器将混淆那些错误分类的数据点。离群数据点也可以位于相似度-非相似度图上。合成数据的各种示例用于突出显示建议绘图的重要特征。来自生物医学数据的一些现实生活中的例子也用于分析。建议的绘图与特征空间的维数无关。

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