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Blindly Selecting Method of Training Samples Baded Data''s Intrinsic Character for Machine Learning

机译:机器学习训练样本坏数据本征特征的盲选方法

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The supervised machine learning is the main analyzing method for the object recognition, but, when we analyze the multidimensional data using the supervised learning method, how can we get the training data from the data itself without other previous knowledge? Based on the intrinsic assembling feature of the multidimensional data, we present a method to select the training samples for machine learning. Firstly, we calculate each dimension''s probability density estimating (PDE) to find the easily separable dimensions of the multidimensional data, then gain the smallest representative sample sets of all objects through intersecting the data of the same object of each easily separable dimensions, and get the object''s number and the training data sources for the machine learning at the same time; secondly, train the neural network ensembles using the data selected from the representative sample sets to label the other data. Lastly, we analyzed the hyper-spectral images to detect red tide using this method, which proved this method could recognize the red tide effectively
机译:监督机器学习是对象识别的主要分析方法,但是,当我们使用监督的学习方法分析多维数据时,我们如何在没有其他以前的知识的情况下从数据本身获取培训数据?基于多维数据的内在组装特征,我们提出了一种选择用于机器学习的训练样本的方法。首先,我们计算每个维度的概率密度估计(PDE),以找到多维数据的易于可分离的尺寸,然后通过与每个易于可分离尺寸的相同对象的数据相交来获得所有对象的最小代表性样本集。并同时获取机器学习的对象的号码和培训数据源;其次,使用从代表性样本集中选择的数据列出神经网络集合来标记其他数据。最后,我们分析了使用这种方法来检测红潮的超光谱图像,证明了这种方法可以有效地识别红潮

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