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A Novel Algorithm for Outlier Detection in High Dimension and its Application in Mine Disaster Forewarning

机译:一种新型高维的异常检测算法及其在矿区灾害预警中的应用

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The aim of outlier detection was to find out abnormal data patterns concealed in abundant data sets which were sparse and isolate. Mine disaster occurred much more frequently in our country, so it was urgent to take out an effective method to prevent mine disaster and guarantee miner's life and property of the company. In this paper, we presented a new method - AHHDOD, it could not only find out the abnormal data patterns, but also can give the attribution of them. At the end, this method was put into use in the mine disaster forewarning system. The results proved that this method was credible and acceptable.
机译:异常检测的目的是找出隐藏在稀疏和隔离的丰富数据集中的异常数据模式。我国的灾难发生得多频率频率得多,因此迫切需要采取有效的方法来防止矿井灾害,并保证矿工的生命和公司的财产。在本文中,我们介绍了一种新方法 - Ahhdod,它不仅可以找到异常的数据模式,还可以赋予它们的归属。最后,在矿井灾害预警系统中投入使用该方法。结果证明,这种方法是可信和可接受的。

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