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Incremental Distributed Weighted Class Discriminant Analysis on Interval-Valued Emitter Parameters

机译:间隔分布式加权类别判别分析分隔算子参数

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In the age of big data, the emitter parameter measurement data is generally characteristic of uncertainty in the form of normally-distributed intervals, enormous size and continuous growth. However, existing interval-valued data analysis methods generally assume a uniform distribution instead and are unable to adapt to the rapid growth of volume. To address the above problems, we have brought forward an incremental distributed weighted class discriminant analysis method on interval-valued emitter parameters. Extensive experiments indicate that our method is able to cope with these new characteristics effectively.
机译:在大数据的时代,发射极参数测量数据通常是正常分布间隔,巨大和持续增长的形式的不确定性的特征。然而,现有的间隔值数据分析方法通常假设均匀分布,并且不能适应体积的快速增长。为了解决上述问题,我们在间隔的发射极参数上提出了一个增量分布式加权类别判别分析方法。广泛的实验表明,我们的方法能够有效地应对这些新特征。

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