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Affine Feature Extraction: A Generalization Of Thefukunaga-koontz Transformation

机译:仿射特征提取:Thefukunaga-koontz变换的推广

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摘要

Dimension reduction methods are often applied in machine learning and data mining problems. Linear subspace methods are the commonly used ones, such as principal component analysis (PCA), Fisher's linear discriminant analysis (FDA), common spatial pattern (CSP), et al. In this paper, we describe a novel feature extraction method for binary classification problems. Instead of finding linear subspaces, our method finds lower-dimensional affine subspaces satisfying a generalization of the Fukunaga-Koontz transformation (FKT). The proposed method has a closed-form solution and thus can be solved very efficiently. Under normality assumption, our method can be seen as finding an optimal truncated spectrum of the Kullback-Leibler divergence. Also we show that FDA and CSP are special cases of our proposed method under normality assumption. Experiments on simulated data show that our method performs better than PCA and FDA on data that is distributed on two cylinders, even one within the other. We also show that, on several real data sets, our method provides statistically significant improvement on test set accuracy over FDA, CSP and FKT. Therefore the proposed method can be used as another preliminary data-exploring tool to help solve machine learning and data mining problems.
机译:降维方法通常应用于机器学习和数据挖掘问题。线性子空间方法是常用的方法,例如主成分分析(PCA),费舍尔线性判别分析(FDA),公共空间模式(CSP)等。在本文中,我们描述了一种用于二元分类问题的新颖特征提取方法。我们的方法不是找到线性子空间,而是找到满足Fukunaga-Koontz变换(FKT)推广的低维仿射子空间。所提出的方法具有封闭形式的解决方案,因此可以非常有效地解决。在正态假设下,我们的方法可以看作是找到Kullback-Leibler发散的最佳截断谱。我们还表明,在正态性假设下,FDA和CSP是我们提出的方法的特例。在模拟数据上进行的实验表明,对于分布在两个气瓶上的数据,甚至在一个气瓶内的数据,我们的方法都比PCA和FDA更好。我们还显示,在几个真实数据集上,我们的方法相对于FDA,CSP和FKT在测试集准确性上提供了统计学上显着的改进。因此,所提出的方法可以用作另一种初步的数据探索工具,以帮助解决机器学习和数据挖掘问题。

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