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Combining feature wrapper and filter in a novel evolutionary based feature extraction approach

机译:在基于进化的新颖特征提取方法中结合特征包装器和过滤器

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摘要

In pattern recognition and data mining problems, a set of measurable features are required to describe the input objects. The quality of these features in describing the input instance has a direct impact on the success and on the accuracy of the system. Feature extraction is a process for deriving fewer new features than the prior input vectors in order to achieve comparable accuracy with lower cost of feature measurement. In this process, increasing the efficiency could also be considered. In other words feature extraction could help us transform the input space into a decision space in which objects are better discriminated in this space. In this study, we present a new approach to feature extraction using the power of evolutionary algorithm family in optimization to find a linear transformation to a decision space with lower cost of computation and a higher level of accuracy. A combination of feature wrapper and filter methods are used as the evaluation criterion. Mutual information is used as a measure of quality of transformed features and the quality of transformation system is evaluated based on predictive accuracy of the classifier which is in use.
机译:在模式识别和数据挖掘问题中,需要一组可测量的功能来描述输入对象。这些特性在描述输入实例时的质量直接影响系统的成功和准确性。特征提取是一种比先前的输入向量推导更少新特征的过程,以便以较低的特​​征测量成本实现可比的准确性。在此过程中,也可以考虑提高效率。换句话说,特征提取可以帮助我们将输入空间转换为决策空间,在该决策空间中可以更好地区分对象。在这项研究中,我们提出了一种使用进化算法家族在优化中的功能来进行特征提取的新方法,该方法可以以较低的计算成本和较高的准确性找到对决策空间的线性变换。特征包装器和过滤器方法的组合用作评估标准。互信息用作变换特征质量的度量,并且基于使用中的分类器的预测准确性来评估变换系统的质量。

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