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Downsampled and Undersampled Datasets in Feature Selective Validation (FSV)

机译:特征选择验证(FSV)中的欠采样和欠采样数据集

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摘要

Feature selective validation (FSV) is a heuristic method for quantifying the (dis)similarity of two datasets. The computational burden of obtaining the FSV values might be unnecessarily high if datasets with large numbers of points are used. While this may not be an important issue per se it is an important issue for future developments in FSV such as real-time processing or where multidimensional FSV is needed. Coupled with the issue of dataset size, is the issue of datasets having “missing” values. This may come about because of a practical difficulty or because of noise or other confounding factors making some data points unreliable. These issues relate to the question “what is the effect on FSV quantification of reducing or removing data points from a comparison-i.e., down- or undersampling data?” This paper uses three strategies to achieve this from known datasets. This paper demonstrates, through a representative sample of 16 pairs of datasets, that FSV is robust to changes providing a minimum dataset size of approximately 200 points is maintained. It is robust also for up to approximately 10% “missing” data, providing this does not result in a continuous region of missed data.
机译:特征选择验证(FSV)是一种启发式方法,用于量化两个数据集的(不相似)相似性。如果使用具有大量点的数据集,则获得FSV值的计算负担可能会不必要地高。尽管这本身可能不是一个重要的问题,但是对于FSV的未来发展(例如实时处理)或需要多维FSV的情况,这却是一个重要的问题。与数据集大小相关的是具有“缺失”值的数据集。这可能是由于实际困难或由于噪声或其他混杂因素导致某些数据点不可靠而导致的。这些问题与以下问题有关:“减少或减少比较中的数据点(即降低或降低采样的数据)对FSV量化有什么影响?”本文使用三种策略从已知数据集中实现这一目标。本文通过一个具有代表性的16对数据集样本证明,只要保持最小数据集大小约为200点,FSV就可以很好地应对变化。如果不会导致丢失数据的连续区域,它对于高达约10%的“丢失”数据也很可靠。

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