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Improvements over Adaptive Local Hyperplane to Achieve Better Classification

机译:改进适应性本地超平面以实现更好的分类

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A new classification model called adaptive local hyperplane (ALH) has been shown to outperform many state-of-the-arts classifiers on benchmark data sets. By representing the data in a local subspace spanned by samples carefully chosen by Fisher's feature weighting scheme, ALH attempts to search for optimal pruning parameters after large number of iterations. However, the feature weight scheme is less accurate in quantifying multi-class problems and samples being rich of redundance. It results in an unreliable selection of prototypes and degrades the classification performance. In this paper, we propose improvement over standard ALH in two aspects. Firstly, we quantify and demonstrate that feature weighting after mutual information is more accurate and robust. Secondly, we propose an economical numerical algorithm to facilitate the matrix inversion, which is a key step in hyperplane construction. The proposed step could greatly low the computational cost and is promising fast applications, such as on-line data mining. Experimental results on both synthetic and real benchmarks data sets have shown that the improvements achieved better performance.
机译:一种新的分类模型称为自适应局部超平面(ALH)已被证明优于许多在基准数据集的国家的最艺术的分类。通过表示由Fisher的特征加权方案仔细选择样本跨越的局部子空间中的数据,ALH尝试搜索后大量迭代最佳修剪参数。然而,特征权重方案是在量化多类问题和样品富含冗余的不准确。它导致原型的可靠选择,并降低分类性能。在本文中,我们提出了两个方面的改进在标准ALH。首先,我们量化并表明特征加权后的互信息更准确,更稳健。其次,我们提出了一种经济的数值算法,以便于矩阵求逆,这是在超平面结构的关键步骤。建议的步骤可以大大低的计算成本,并承诺快速应用,如在线数据挖掘。在合成的和真实的基准数据的实验结果表明,该改进实现了更好的性能。

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