Finding Local Anomalies in Very High Dimensional Space

T. D. Vries, S. Chawla, M. Houle
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引用次数: 86

Abstract

Time, cost and energy efficiency are critical factors for many data analysis techniques when the size and dimensionality of data is very large. We investigate the use of Local Outlier Factor (LOF) for data of this type, providing a motivating example from real world data. We propose Projection-Indexed Nearest-Neighbours (PINN), a novel technique that exploits extended nearest neighbour sets in the a reduced dimensional space to create an accurate approximation for k-nearest-neighbour distances, which is used as the core density measurement within LOF. The reduced dimensionality allows for efficient sub-quadratic indexing in the number of items in the data set, where previously only quadratic performance was possible. A detailed theoretical analysis of Random Projection(RP) and PINN shows that we are able to preserve the density of the intrinsic manifold of the data set after projection. Experimental results show that PINN outperforms the standard projection methods RP and PCA when measuring LOF for many high-dimensional real-world data sets of up to 300000 elements and 102600 dimensions.
在非常高维空间中寻找局部异常
当数据的大小和维度非常大时,时间、成本和能源效率是许多数据分析技术的关键因素。我们研究了局部离群因子(LOF)对这类数据的使用,并提供了一个来自真实世界数据的激励示例。我们提出了投影索引最近邻(PINN),这是一种利用降维空间中的扩展最近邻集来创建k-最近邻距离的精确近近值的新技术,用于LOF内的核心密度测量。降维允许对数据集中的项目数量进行有效的次二次索引,而以前只有二次性能是可能的。对随机投影(RP)和PINN的详细理论分析表明,我们能够在投影后保持数据集的固有流形的密度。实验结果表明,对于多达300000个元素和102600个维度的高维真实数据集,PINN在测量LOF时优于标准投影方法RP和PCA。
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