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A Generic Multi-dimensional Feature Extractionmethod Using Multiobjective Geneticrnprogramming

机译:基于多目标遗传程序的通用多维特征提取方法

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摘要

In this paper, we present a generic feature extraction method for pattern classification using multiobjective genetic programming. This not only evolves the (near-)optimal set of mappings from a pattern space to a multi-dimensional decision space, but also simultaneously optimizes the dimensionality of that decision space. The presented framework evolves vector-to-vector feature extractors that maximize class separability. We demonstrate the efficacy of our approach by making statistically-founded comparisons with a wide variety of established classifier paradigms over a range of datasets and find that for most of the pairwise comparisons, our evolutionary method delivers statistically smaller misclassification errors. At very worst, our method displays no statistical difference in a few pairwise comparisons with established classifier/dataset combinations; crucially, none of the misclassification results produced by our method is worse than any comparator classifier. Although principally focused on feature extraction, feature selection is also performed as an implicit side effect; we show that both feature extraction and selection are important to the success of our technique. The presented method has the practical consequence of obviating the need to exhaustively evaluate a large family of conventional classifiers when faced with a new pattern recognition problem in order to attain a good classification accuracy.
机译:在本文中,我们提出了一种使用多目标遗传程序进行模式分类的通用特征提取方法。这不仅使从模式空间到多维决策空间的(近)最优映射集得到发展,而且同时优化了该决策空间的维数。提出的框架发展了矢量到矢量特征提取器,可最大程度地提高类的可分离性。我们通过在一系列数据集上与各种已建立的分类器范式进行基于统计的比较,从而证明了我们方法的有效性,并发现对于大多数成对比较,我们的进化方法在统计上具有较小的误分类错误。最糟糕的是,在建立分类器/数据集组合的成对比较中,我们的方法没有统计差异。至关重要的是,我们的方法所产生的错误分类结果均不比任何比较器分类器差。尽管主要专注于特征提取,但特征选择也作为隐式副作用进行;我们表明,特征提取和选择对我们技术的成功至关重要。所提出的方法的实际结果是,当面对新的模式识别问题时,为了获得良好的分类精度,就无需详尽评估大量传统分类器。

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