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Efficient Dimensionality Reduction on Undersampled Problems through Incremental Discriminative Common Vectors

机译:通过增量鉴别普遍载体有效减少缺乏采样问题的维度

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An efficient incremental approach to the discriminative common vector (DCV) method for dimensionality reduction and classification is presented. Starting from the original batch method, an incremental formulation is given. The main idea is to minimize both matrix operations and space constraints. To this end, an straightforward per sample correction is obtained enabling the possibility of setting up an efficient online algorithm. The performance results and the same good properties than the original method are preserved but with a very significant decrease in computational burden when used in dynamic contexts. Extensive experimentation assessing the properties of the proposed algorithms with regard to previously proposed ones using several publicly available high dimensional databases has been carried out.
机译:提出了一种有效的增量方法,用于维度降低和分类的鉴别常见的常见载体(DCV)方法。从原始批处理方法开始,给出增量配方。主要思想是最小化矩阵操作和空间约束。为此,获得每个采样校正的直截了当的能够实现高效的在线算法的可能性。保留了比原始方法的性能结果和相同的良好性质,但在动态上下文中使用时,计算负担的减少非常显着降低。已经进行了广泛的实验,评估了使用若干公开可用的高维数据库的先前提出的算法的特性。

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