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A New Approximation Method of the Quadratic Discriminant Function

机译:二次判别函数的一种新的逼近方法

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摘要

For many statistical pattern recognition methods, distributions of sample vectors are assumed to be normal, and the quadratic discriminant function derived from the probability density function of multivariate normal distribution is used for classification. However, the computational cost is O(n~2) for n-dimensional vectors. Moreover, if there are not enough training sample patterns, covariance matrix can not be estimated accurately. In the case that the dimensionality is large, these disadvantages markedly reduce classification performance. In order to avoid these problems, in this paper, a new approximation method of the quadratic discriminant function is proposed. This approximation is done by replacing the values of small eigenvalues by a constant which is estimated by the maximum likelihood estimation. This approximation not only reduces the computational cost but also improves the classification accuracy.
机译:对于许多统计模式识别方法,假定样本矢量的分布是正态的,并且使用从多元正态分布的概率密度函数得出的二次判别函数进行分类。但是,对于n维向量,计算成本为O(n〜2)。此外,如果没有足够的训练样本模式,则无法准确估计协方差矩阵。在维数较大的情况下,这些缺点会明显降低分类性能。为了避免这些问题,本文提出了一种新的二次判别函数的逼近方法。通过用由最大似然估计所估计的常数替换小的特征值来完成这种近似。这种近似不仅降低了计算成本,而且提高了分类精度。

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