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Quick online feature selection method for regression -A feature selection method inspired by human behavior

机译:快速在线特征选择方法,用于人类行为激发的特征选择方法

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The task of variable selection is essential to improving the ability of machine learning systems to generalize. Although there are many conventional variable selection methods, almost all of them need to prepare and learn a large number of samples in advance because they are based on offline learning. This property is not suitable for online learning systems. To overcome this inconvenience, we propose a quick online variable selection method inspired by human problem solving behaviors. The proposed method tries to generate several variable set candidates in a speculative manner using a filter method and evaluates them using a wrapper method. The method can also function in concept-drifting environments, where relevant variable sets are changing. The experimental results show that the new method yields appropriate variable sets from a small number of samples.
机译:变量选择的任务对于提高机器学习系统概括的能力至关重要。虽然存在许多传统的可变选择方法,但几乎所有这些都需要预先准备和学习大量样本,因为它们基于离线学习。此属性不适合在线学习系统。为了克服这种不便,我们提出了一种快速的在线变量选择方法,受到人类问题的解决行为的启发。所提出的方法尝试使用滤波器方法以推测方式生成多个变量集候选,并使用包装器方法进行评估。该方法还可以在概念漂移环境中运行,其中相关变量集正在发生变化。实验结果表明,新方法从少量样品产生适当的可变集。

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