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首页> 外文期刊>International Journal of Computational Intelligence and Applications >DESIGNING RELEVANT FEATURES FOR CONTINUOUS DATA SETS USING ICA
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DESIGNING RELEVANT FEATURES FOR CONTINUOUS DATA SETS USING ICA

机译:使用ICA设计连续数据集的相关功能

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摘要

Isolating relevant information and reducing the dimensionality of the original data set are key areas of interest in pattern recognition and machine learning. In this paper, a novel approach to reducing dimensionality of the feature space by employing independent component analysis (ICA) is introduced. While ICA is primarily a feature extraction technique, it is used here as a feature selection/construction technique in a generic way. The new technique, called feature selection based on independent component analysis (FS_ICA), efficiently builds a reduced set of features without loss in accuracy and also has a fast incremental version. When used as a first step in supervised learning, FS_ICA outperforms comparable methods in efficiency without loss of classification accuracy. For large data sets as in medical image segmentation of high-resolution computer tomography images, FS_ICA reduces dimensionality of the data set substantially and results in efficient and accurate classification.
机译:隔离相关信息并减少原始数据集的维数是模式识别和机器学习中关注的关键领域。本文介绍了一种通过采用独立分量分析(ICA)来减少特征空间维数的新方法。尽管ICA主要是一种特征提取技术,但在这里它以一般方式用作特征选择/构造技术。这项称为独立组件分析的特征选择(FS_ICA)的新技术可有效构建精简的特征集,而不会降低准确性,并且具有快速的增量版本。当用作监督学习的第一步时,FS_ICA的效率要优于同类方法,而不会降低分类精度。对于高分辨率计算机断层扫描图像的医学图像分割中的大型数据集,FS_ICA大大降低了数据集的维数,并导致有效而准确的分类。

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